← Back to the catalog
Private

EcoSIS Leaf reflectance and tratis of floating and emergent macrophytes (reflectance)

ecosis · NIR

EcoSIS Leaf reflectance and tratis of floating and emergent macrophytes (reflectance). v2.0 standardized NIRS package: 1 spectral source(s), 13 declared target(s). Auto-generated from dataset_card.json (verify before publication).

nirv2ecosis
🔒
Private dataset. Full metadata and metrics are shown, but the bytes are not redistributed here — exporting the data requires a Dataverse token. The identity card carries no spectra, only descriptive statistics.
325
samples
1,024
wavelengths
1
sources
13
targets
27
metadata
NIR
family

Dataset property explorer

Mean profile risk0.53
Highest axisArtefacts locaux · 1.00
Diagnostics8
Sources profiled1
EcoSIS Leaf reflectance and tratis of floating and emergent macrophytes (reflectance) property profile0.250.50.751integritynoiseartefactsbaselinePCA outliersreferencerepeatabilitystructureEcoSIS Leaf reflectance and tratis of floating and emergent macrophytes (reflectance) profileintegrity: 0.00noise: 0.01artefacts: 1.00baseline: 0.77PCA outliers: 0.61reference: 0.88repeatability: 0.00structure: 0.94EcoSIS Leaf ref…0 center · 1 outer ring · outward = stronger anomaly / heterogeneity signal

Profile axes

Intégrité0.00
Artefacts locaux1.00
Bruit0.01
Outliers PCA0.61
Distance à la référence0.88
Répétabilité0.00
Baseline / forme0.77
Structure multi-régimes0.94
Diagnostic hypotheses00.250.50.751hypothesis scoreSplice / raccord détecteursSplice / raccord détecteurs: 0.840.84Erreur interpolation / réécha…Erreur interpolation / rééchantillonnage: 0.670.67Erreur calibration / référenc…Erreur calibration / référence blanche: 0.660.66Signature VERA25-likeSignature VERA25-like: 0.640.64Fond différentFond différent: 0.600.60Différence de sonde / géométr…Différence de sonde / géométrie: 0.550.55Dataset multi-régimesDataset multi-régimes: 0.550.55Spectre hors domaine valideSpectre hors domaine valide: 0.530.53
DiagnosticScoreForceSignauxInterprétation probable
Splice / raccord détecteursX0.84forteSpike rate 1.00, Jump rate 1.00, SNR non dégradé 1.00Rupture aux jonctions de détecteurs, calibration locale ou sonde différente.
Erreur interpolation / rééchantillonnageX0.67moyenneSpike rate 1.00, Jump rate 1.00, SNR normal/élevé 1.00Artefacts numériques ou traitement spectral incorrect.
Erreur calibration / référence blancheX0.66moyenneartefacts locaux 1.00, RMS/SAM référence 0.88, Baseline/mean/area 0.77Décalage systématique entre campagnes, instruments ou référence blanche.
Signature VERA25-likeX0.64moyenneSpike rate 1.00, Jump rate 1.00, RMS/SAM référence 0.88Combinaison possible changement de sonde + splice, amplifiée par géométrie, fond ou calibration.
Fond différentX0.60moyenneRMS/SAM référence 0.88, Baseline/mean/area 0.77, PCA Q 0.61Effet systématique du support, blanc/noir, transflectance ou environnement de mesure.
Différence de sonde / géométrieX0.55moyenneRMS/SAM référence 0.88, Baseline/mean/area 0.77, PCA Q 0.61Modification de l'illumination, collecte, angle ou distance sonde-échantillon.
Dataset multi-régimesX0.55moyenneStructure PCA 0.94, RMS/SAM référence 0.88, PCA Q 0.61Mélange de campagnes, opérateurs, lots, setups ou sous-populations spectrales.
Spectre hors domaine valideX0.53moyenneStructure PCA 0.94, RMS/SAM référence 0.88, Mahalanobis / T2 0.57Variété, espèce, lot ou condition différente mais physiquement plausible.

Spectral sources

leaf_spectra.csv

X · NIR · Spectral Evolution SR-3500
leaf_spectra.csv spectra-0.20.00.20.40.601,0002,0003,000q05-q95 envelopeq25-q75 envelopemedian spectrummedianq25–q75q05–q95wavelength / nm345nm — median 0.1758 (q25–q75 0.1537–0.1943)356nm — median 0.1259 (q25–q75 0.108–0.1449)368nm — median 0.106 (q25–q75 0.08918–0.1222)379nm — median 0.08542 (q25–q75 0.07026–0.104)390nm — median 0.04943 (q25–q75 0.04068–0.0677)402nm — median 0.04135 (q25–q75 0.03467–0.06056)413nm — median 0.03244 (q25–q75 0.02743–0.05076)425nm — median 0.0289 (q25–q75 0.02396–0.0496)436nm — median 0.027 (q25–q75 0.02127–0.04952)447nm — median 0.0264 (q25–q75 0.02003–0.05019)459nm — median 0.02675 (q25–q75 0.01965–0.0497)469nm — median 0.02711 (q25–q75 0.01958–0.05012)480nm — median 0.0267 (q25–q75 0.01892–0.04934)492nm — median 0.02846 (q25–q75 0.01974–0.04976)502nm — median 0.032 (q25–q75 0.02227–0.05302)513nm — median 0.04408 (q25–q75 0.03223–0.06489)524nm — median 0.0758 (q25–q75 0.0618–0.0997)535nm — median 0.1035 (q25–q75 0.08637–0.1294)545nm — median 0.1166 (q25–q75 0.09676–0.1432)557nm — median 0.1209 (q25–q75 0.09993–0.1486)567nm — median 0.1093 (q25–q75 0.08933–0.1359)578nm — median 0.08602 (q25–q75 0.06863–0.1113)588nm — median 0.07533 (q25–q75 0.05821–0.09794)598nm — median 0.07049 (q25–q75 0.05472–0.09274)610nm — median 0.0624 (q25–q75 0.04837–0.08373)620nm — median 0.05254 (q25–q75 0.03957–0.07456)629nm — median 0.04926 (q25–q75 0.03699–0.07081)641nm — median 0.0467 (q25–q75 0.03493–0.06656)650nm — median 0.04043 (q25–q75 0.02906–0.05754)660nm — median 0.03348 (q25–q75 0.02325–0.04973)671nm — median 0.02665 (q25–q75 0.01811–0.04242)680nm — median 0.02735 (q25–q75 0.01886–0.04288)691nm — median 0.04351 (q25–q75 0.03225–0.06121)701nm — median 0.111 (q25–q75 0.09211–0.1364)710nm — median 0.2185 (q25–q75 0.1866–0.2497)721nm — median 0.3304 (q25–q75 0.2953–0.3559)730nm — median 0.4009 (q25–q75 0.3573–0.4233)739nm — median 0.4368 (q25–q75 0.3948–0.464)749nm — median 0.4568 (q25–q75 0.4112–0.4866)758nm — median 0.4632 (q25–q75 0.4182–0.4929)767nm — median 0.4665 (q25–q75 0.4211–0.4975)777nm — median 0.4668 (q25–q75 0.4226–0.4987)786nm — median 0.4671 (q25–q75 0.4231–0.4999)795nm — median 0.4678 (q25–q75 0.4227–0.5002)805nm — median 0.4674 (q25–q75 0.423–0.5001)813nm — median 0.4674 (q25–q75 0.4237–0.5011)823nm — median 0.4677 (q25–q75 0.4238–0.501)832nm — median 0.4677 (q25–q75 0.4242–0.5003)840nm — median 0.4676 (q25–q75 0.4235–0.5)849nm — median 0.4673 (q25–q75 0.4239–0.4988)857nm — median 0.4673 (q25–q75 0.4236–0.4982)866nm — median 0.4664 (q25–q75 0.4234–0.4972)875nm — median 0.4653 (q25–q75 0.4231–0.4958)883nm — median 0.4651 (q25–q75 0.4232–0.4957)891nm — median 0.4653 (q25–q75 0.4233–0.4953)899nm — median 0.4651 (q25–q75 0.4233–0.4948)907nm — median 0.4647 (q25–q75 0.4228–0.4946)916nm — median 0.4642 (q25–q75 0.4225–0.4943)923nm — median 0.4634 (q25–q75 0.4224–0.4933)931nm — median 0.4621 (q25–q75 0.4216–0.4921)939nm — median 0.4598 (q25–q75 0.4195–0.4894)946nm — median 0.4558 (q25–q75 0.4172–0.4865)952nm — median 0.4513 (q25–q75 0.4132–0.4819)959nm — median 0.4485 (q25–q75 0.4094–0.4783)964nm — median 0.4472 (q25–q75 0.4072–0.4767)970nm — median 0.4466 (q25–q75 0.4069–0.4761)976nm — median 0.4466 (q25–q75 0.4069–0.4764)982nm — median 0.4474 (q25–q75 0.4072–0.4786)987nm — median 0.4484 (q25–q75 0.4074–0.4804)993nm — median 0.4454 (q25–q75 0.4042–0.4714)998nm — median 0.4445 (q25–q75 0.4036–0.4699)1003.1nm — median 0.4462 (q25–q75 0.4045–0.4719)1,023nm — median 0.4503 (q25–q75 0.41–0.478)1,050nm — median 0.4546 (q25–q75 0.4157–0.4821)1,082nm — median 0.4547 (q25–q75 0.4163–0.4827)1,110nm — median 0.4508 (q25–q75 0.4124–0.4799)1,137nm — median 0.4377 (q25–q75 0.3991–0.4637)1,169nm — median 0.4109 (q25–q75 0.3738–0.4386)1,196nm — median 0.4088 (q25–q75 0.3714–0.437)1,223nm — median 0.4126 (q25–q75 0.3749–0.4409)1,254nm — median 0.4163 (q25–q75 0.3787–0.4442)1,281nm — median 0.4135 (q25–q75 0.3762–0.4412)1,308nm — median 0.4008 (q25–q75 0.3639–0.429)1,339nm — median 0.3624 (q25–q75 0.3282–0.3939)1,365nm — median 0.3225 (q25–q75 0.2891–0.3572)1,396nm — median 0.1948 (q25–q75 0.1581–0.2292)1,422nm — median 0.1139 (q25–q75 0.08809–0.1412)1,449nm — median 0.1041 (q25–q75 0.07908–0.1339)1,479nm — median 0.1194 (q25–q75 0.092–0.1563)1,505nm — median 0.151 (q25–q75 0.121–0.1946)1,531nm — median 0.1828 (q25–q75 0.1528–0.2303)1,560nm — median 0.2159 (q25–q75 0.1855–0.2648)1,586nm — median 0.2387 (q25–q75 0.2067–0.2869)1,611nm — median 0.2561 (q25–q75 0.2238–0.3025)1,641nm — median 0.2687 (q25–q75 0.2363–0.3128)1,666nm — median 0.2728 (q25–q75 0.2403–0.3163)1,695nm — median 0.2687 (q25–q75 0.2359–0.3116)1,720nm — median 0.2587 (q25–q75 0.2268–0.3021)1,745nm — median 0.2439 (q25–q75 0.2124–0.2877)1,773nm — median 0.2245 (q25–q75 0.1924–0.2679)1,798nm — median 0.2193 (q25–q75 0.1863–0.2601)1,822nm — median 0.2183 (q25–q75 0.1841–0.2583)1,850nm — median 0.2007 (q25–q75 0.1666–0.2391)1867.1nm — median 0.1594 (q25–q75 0.1279–0.1984)1878.1nm — median 0.1092 (q25–q75 0.08476–0.1366)1,891nm — median 0.03926 (q25–q75 0.02868–0.05562)1,902nm — median 0.02074 (q25–q75 0.01497–0.0341)1,917nm — median 0.01368 (q25–q75 0.009902–0.02652)1,939nm — median 0.01374 (q25–q75 0.009886–0.02688)1,959nm — median 0.01731 (q25–q75 0.01263–0.03113)1,980nm — median 0.02413 (q25–q75 0.01806–0.0406)1,999nm — median 0.03207 (q25–q75 0.02434–0.0524)2,018nm — median 0.04157 (q25–q75 0.03132–0.06632)2,040nm — median 0.05224 (q25–q75 0.03983–0.08268)2,058nm — median 0.06125 (q25–q75 0.04699–0.09515)2,077nm — median 0.06999 (q25–q75 0.05359–0.1082)2,098nm — median 0.08088 (q25–q75 0.06331–0.1223)2,116nm — median 0.08974 (q25–q75 0.06985–0.1328)2,135nm — median 0.09696 (q25–q75 0.07512–0.1404)2,155nm — median 0.1036 (q25–q75 0.08022–0.1466)2,173nm — median 0.1069 (q25–q75 0.08291–0.1494)2,194nm — median 0.11 (q25–q75 0.08558–0.1525)2,211nm — median 0.1125 (q25–q75 0.08795–0.1549)2,229nm — median 0.1119 (q25–q75 0.0877–0.1537)2,249nm — median 0.1062 (q25–q75 0.08275–0.1461)2,266nm — median 0.09756 (q25–q75 0.07592–0.1363)2,283nm — median 0.08968 (q25–q75 0.06987–0.127)2,302nm — median 0.08172 (q25–q75 0.06243–0.1169)2,319nm — median 0.07473 (q25–q75 0.05706–0.108)2,336nm — median 0.06893 (q25–q75 0.05247–0.09938)2,355nm — median 0.06096 (q25–q75 0.04627–0.08881)2,371nm — median 0.05514 (q25–q75 0.04148–0.08094)2,388nm — median 0.0492 (q25–q75 0.03684–0.07324)2,406nm — median 0.04137 (q25–q75 0.03147–0.06375)2,422nm — median 0.036 (q25–q75 0.02783–0.05739)2,440nm — median 0.0299 (q25–q75 0.02276–0.0472)2,455nm — median 0.02552 (q25–q75 0.0192–0.04348)2,471nm — median 0.02106 (q25–q75 0.01505–0.03815)2,488nm — median 0.01946 (q25–q75 0.01346–0.03524)2,503nm — median 0.01472 (q25–q75 0.007031–0.02896)

Sampling

Wavelengths1,024
Axis range345–2,503 nm
Mean spacing2.11 nm
Gridirregular
Observations325

Signal & quality

Value range-0.0315 – 0.616
Mean range0.0179 – 0.456
Mean level0.2187
Area452.4
PTP0.4379
Noise RMS0.00021728
SNR1e+03
SNR dB6e+01 dB
Dynamic range0.438
Smoothness0.003059
Saturated0.0%
X-outliers155

Integrity & artefacts

NaN ratio0.00%
Inf count0
Zero ratio0.02%
Spike count18,343
Spike rate5.52%
Jump count14,404
Jump rate4.33%
Clip fraction0.00%

Shape & reference

Baseline slope-0.16833
Curvature RMS0.0027125
D1 RMS0.0039461
RMS to mean0.033491
RMS p950.096343
SAM to mean0.06151
SAM p950.12307
Affine offset p950.046213
Affine gain p95 Δ0.34286
Affine residual p950.029283
Xcorr lag p950

Outliers & repeatability

PCA Q p95/median4.9
Hotelling T2 p95/median4.5
Mahalanobis H p95/median2.1
Repeat groups0

Dimensionality (PCA)

Effective rank2
PCs → 95% var3
PCs → 99% var6
Top-10 cum. var99.8%
Computed metric scores 29worst 1.00
FamilleMétrique calculéeValeurScoreNiveauInterprétation datasetCauses typiquesCalcul / scoring
Intégrité des donnéesNaN ratiointegrity.nan_ratio0%0.00faibleSpectre completErreur acquisition/exportcount(isnan(X)) / X.sizealert = min(1, nan_ratio / 0.05)
Intégrité des donnéesInf countintegrity.inf_count00.00faibleNormalCalculs invalidescount(isinf(X))alert = min(1, inf_count / 1)
Intégrité des donnéesZero ratiointegrity.zero_ratio0.0222%0.00faibleNormalExport, saturationcount(X == 0) / count(finite X)alert = min(1, zero_ratio / 0.05)
Amplitude globaleMean reflectanceamplitude.mean_reflectance0.21870.77fortValeur atypique: Trop clair / fond visible ou Trop sombreFond, géométriemean(X finite)alert reuses baseline/shape drift because absolute reflectance ranges are technology-dependent
Amplitude globaleArea under curveamplitude.area_under_curve452.430.77fortValeur atypique: Différence d'éclairement ou NormalDistance sondetrapezoid(mean_spectrum, spectral_axis)alert reuses baseline/shape drift because area scale depends on axis and units
Amplitude globalePeak-to-peak (PTP)amplitude.peak_to_peak0.437860.00faibleVariabilité forteSaturationmax(mean_spectrum) - min(mean_spectrum)alert increases when dynamic range is abnormally flat
Amplitude globaleVarianceamplitude.variance0.0314330.00faibleNormal ou hétérogèneMauvais contactvar(X finite)alert increases when variance/dynamic range is abnormally flat
BruitNoise RMSnoise.noise_rms0.000217280.01faibleStableLampe, détecteurmedian MAD(second derivative) * 1.4826 / sqrt(6)alert = noise_rms / signal_scale, saturated at 5%
BruitSNRnoise.snr1006.50.00faibleBon signalAcquisitionmean(abs(X)) / noise_rmsalert decreases with SNR dB; >=40 dB is treated as low alert
BruitBandwise SNRnoise.bandwise_snr_min6.75640.53moyenZone problématiqueDétecteurmin(abs(mean_spectrum) / local second-derivative noise)alert decreases with worst-band SNR dB; >=35 dB is treated as low alert
Artefacts locauxSpike countartefacts.spike_count18,3431.00fortArtefactsCosmic rays, splicecount robust outliers in second derivativealert follows spike_rate, saturated at 1%
Artefacts locauxSpike rateartefacts.spike_rate5.52%1.00fortSpectre suspectInterpolationspike_count / (n_samples * (n_features - 2))alert = min(1, spike_rate / 0.01)
Artefacts locauxJump countartefacts.jump_count14,4041.00fortRaccord détecteurSplicecount robust outliers in first derivativealert follows jump_rate, saturated at 1%
Artefacts locauxJump rateartefacts.jump_rate4.33%1.00fortProblème spectralCalibrationjump_count / (n_samples * (n_features - 1))alert = min(1, jump_rate / 0.01)
Artefacts locauxClip fractionartefacts.clip_fraction0.000601%0.00faibleNormalDétecteur saturéfraction of finite cells equal to repeated min/max extremaalert = min(1, clip_fraction / 0.01)
Forme spectraleBaseline slopeshape.baseline_slope-0.168330.77fortDériveÉclairementlinear slope of mean_spectrum over normalized axisalert = abs(slope / signal_scale), saturated at 0.5
Forme spectraleCurvature RMSshape.curvature_rms0.00271250.62moyenForme inhabituelleFond, splicemedian RMS(second derivative per spectrum)alert = curvature_rms / signal_scale, saturated at 1%
Forme spectraleD1 RMSshape.d1_rms0.00394610.18faiblePlatBiologie ou artefactmedian RMS(first derivative per spectrum)alert = d1_rms / signal_scale, saturated at 5%
Outliers multivariésPCA Q (SPE)outliers.pca_q_ratio4.85780.61moyenSpectre atypiqueArtefact, mélangep95(Q/SPE residual) / median(Q/SPE residual)alert = min(1, pca_q_ratio / 8)
Outliers multivariésHotelling T²outliers.hotelling_t2_ratio4.53860.57moyenExtrême mais cohérentVariabilité naturellep95(Hotelling T2) / median(Hotelling T2)alert = min(1, hotelling_t2_ratio / 8)
Outliers multivariésMahalanobis Houtliers.mahalanobis_h_ratio2.13040.53moyenOutlier globalDomaine différentp95(sqrt(T2)) / median(sqrt(T2))alert = min(1, mahalanobis_h_ratio / 4)
Comparaison à référenceRMS to mean spectrumreference.rms_to_mean_spectrum_p950.0963430.88fortSpectre différentDomain shiftp95 RMS distance to dataset mean spectrumalert = RMS_p95 / signal_scale, saturated at 25%
Comparaison à référenceSpectral Angle Mapper (SAM)reference.sam_to_mean_spectrum_p950.123070.35faibleSimilaireFond, géométriep95 spectral angle to dataset mean spectrumalert = min(1, SAM_p95 / 0.35 rad)
RépétabilitéRMS intra-IDrepeatability.rms_intra_id0.00faibleStablePositionnementmedian RMS distance to repeated-sample centroidalert = RMS_intra_ID / signal_scale, saturated at 10%
RépétabilitéSAM intra-IDrepeatability.sam_intra_id0.00faibleStableAcquisitionmedian SAM to repeated-sample centroidalert = min(1, SAM_intra_ID / 0.15 rad)
RépétabilitéCV intra-IDrepeatability.cv_intra_id0.00faibleStableOpérateurmedian within-ID band CValert = min(1, CV_intra_ID / 0.25)
Structure du datasetPCA score densitystructure.pca_score_density4.11080.94fortSous-populationsLots différents1 / median kNN distance in PCA score spacealert follows density_cv/profile structure complexity, not raw density alone
Structure du datasetLocal Outlier Factor (LOF)structure.local_outlier_factor_p952.81380.91fortSpectre isoléCas raresp95 approximate LOF from PCA-score kNN distancesalert = min(1, max(0, LOF_p95 - 1) / 2)
Structure du datasetIsolation Forest scorestructure.isolation_forest_score_p950.580630.94fortSpectre atypiqueDiverses causesp95 IsolationForest anomaly score on PCA scoresalert follows structure complexity; raw score is implementation-dependent
X PCA score plot-7.5-5.0-2.50.02.55.0-2-1012PC1 -1.634 · PC2 -0.9867PC1 0.5663 · PC2 -1.03PC1 0.667 · PC2 -0.7476PC1 0.7768 · PC2 -0.509PC1 -0.5172 · PC2 -0.7817PC1 1.57 · PC2 -0.7349PC1 -0.6864 · PC2 0.9228PC1 -0.1896 · PC2 0.6677PC1 2.366 · PC2 1.489PC1 0.465 · PC2 1.014PC1 0.9419 · PC2 0.7161PC1 1.81 · PC2 1.495PC1 -2.161 · PC2 -0.7503PC1 -1.256 · PC2 -0.5255PC1 -1.465 · PC2 -0.6018PC1 1.301 · PC2 -0.1447PC1 0.2119 · PC2 -0.7065PC1 -0.1691 · PC2 -0.8243PC1 -2.875 · PC2 -0.2801PC1 0.2668 · PC2 0.3422PC1 -0.5001 · PC2 0.1319PC1 -0.9584 · PC2 0.1647PC1 -1.755 · PC2 -0.1081PC1 -1.76 · PC2 0.07836PC1 -0.161 · PC2 0.3387PC1 -0.817 · PC2 -0.04671PC1 -0.2549 · PC2 0.2937PC1 -0.8702 · PC2 0.1182PC1 -0.04568 · PC2 0.5791PC1 -2.954 · PC2 -0.3206PC1 -2.488 · PC2 -0.1413PC1 -1.468 · PC2 0.1294PC1 -1.126 · PC2 -0.01449PC1 -0.873 · PC2 0.04593PC1 -2.017 · PC2 0.0124PC1 -1.418 · PC2 0.07707PC1 0.1839 · PC2 0.2273PC1 -0.4185 · PC2 0.1243PC1 -3.301 · PC2 -0.3008PC1 -1.209 · PC2 -0.08826PC1 2.217 · PC2 0.2792PC1 -4.93 · PC2 -0.6614PC1 -2.415 · PC2 -0.2253PC1 -0.9591 · PC2 0.1317PC1 -0.7462 · PC2 0.09004PC1 -1.615 · PC2 -0.1623PC1 -3.098 · PC2 -0.2428PC1 0.8708 · PC2 -0.6652PC1 0.7392 · PC2 -0.7963PC1 1.008 · PC2 -0.8698PC1 0.7538 · PC2 -0.8763PC1 0.1897 · PC2 -0.8832PC1 1.034 · PC2 -0.9431PC1 0.1828 · PC2 -0.851PC1 0.7817 · PC2 -0.9566PC1 0.6015 · PC2 -0.5928PC1 0.8608 · PC2 1.338PC1 0.7428 · PC2 1.488PC1 -0.1386 · PC2 0.9025PC1 0.138 · PC2 0.8934PC1 0.6522 · PC2 0.7691PC1 0.5982 · PC2 1.197PC1 1.013 · PC2 1.046PC1 -0.09174 · PC2 0.9353PC1 -0.2135 · PC2 -0.2916PC1 0.1645 · PC2 -0.3987PC1 0.08005 · PC2 -0.2513PC1 -0.6278 · PC2 -0.3357PC1 0.005692 · PC2 0.6562PC1 0.3909 · PC2 0.9245PC1 -0.789 · PC2 1.344PC1 0.2066 · PC2 0.7984PC1 0.7838 · PC2 0.4044PC1 0.2565 · PC2 0.1164PC1 0.2254 · PC2 0.01198PC1 -1.197 · PC2 -0.3183PC1 -0.297 · PC2 -0.09852PC1 0.08641 · PC2 -0.1866PC1 1.203 · PC2 0.1891PC1 0.8872 · PC2 0.186PC1 0.1937 · PC2 0.2394PC1 -0.03272 · PC2 -0.03412PC1 -0.2247 · PC2 -0.1116PC1 -0.112 · PC2 0.1519PC1 0.04606 · PC2 -0.09582PC1 0.3605 · PC2 0.1689PC1 -0.5585 · PC2 0.05317PC1 -0.6587 · PC2 -0.3031PC1 -0.6009 · PC2 -0.1298PC1 -0.3565 · PC2 -0.1532PC1 0.1354 · PC2 0.2007PC1 -0.09916 · PC2 -0.2179PC1 -0.1957 · PC2 -0.3088PC1 -0.8047 · PC2 -0.0529PC1 -0.6992 · PC2 -0.07847PC1 -1.299 · PC2 -0.2421PC1 -1.042 · PC2 -0.07776PC1 0.09161 · PC2 0.1396PC1 -0.9503 · PC2 -0.08271PC1 -0.848 · PC2 -0.1443PC1 -0.5295 · PC2 -0.1253PC1 -1.583 · PC2 -0.2581PC1 0.08304 · PC2 -0.1694PC1 -0.7402 · PC2 -0.3132PC1 -1.002 · PC2 -0.08956PC1 -0.1031 · PC2 -0.2661PC1 -0.7115 · PC2 -0.1576PC1 -0.4478 · PC2 -0.5202PC1 -1.302 · PC2 -0.133PC1 -1.799 · PC2 -0.3806PC1 -1.383 · PC2 -0.2951PC1 -1.279 · PC2 -0.1446PC1 -1.744 · PC2 -0.06914PC1 -1.22 · PC2 -0.2548PC1 2.394 · PC2 -0.1198PC1 1.533 · PC2 -0.1174PC1 1.094 · PC2 -0.3447PC1 1.384 · PC2 -0.1867PC1 0.4389 · PC2 -0.3363PC1 1.702 · PC2 0.1745PC1 0.8709 · PC2 0.1304PC1 1.593 · PC2 -0.7333PC1 1.311 · PC2 -0.869PC1 1.209 · PC2 -0.7998PC1 1.602 · PC2 -0.5626PC1 1.562 · PC2 -0.5159PC1 1.231 · PC2 -0.5743PC1 1.07 · PC2 -0.6401PC1 1.156 · PC2 -0.678PC1 1.448 · PC2 -0.8309PC1 1.247 · PC2 -0.6795PC1 1.245 · PC2 -0.8588PC1 1.113 · PC2 -0.8571PC1 1.639 · PC2 -0.4695PC1 1.591 · PC2 -0.46PC1 1.139 · PC2 -0.8727PC1 1.304 · PC2 -0.7008PC1 0.2942 · PC2 -0.5894PC1 1.225 · PC2 1.017PC1 0.6343 · PC2 0.7823PC1 1.095 · PC2 0.9491PC1 1.337 · PC2 0.8535PC1 0.2769 · PC2 0.19PC1 -0.2293 · PC2 0.2347PC1 0.1298 · PC2 0.1902PC1 -0.6558 · PC2 -0.08741PC1 0.617 · PC2 0.3894PC1 1.239 · PC2 0.5516PC1 -0.8305 · PC2 0.01078PC1 0.5194 · PC2 0.386PC1 0.2538 · PC2 0.815PC1 0.1717 · PC2 1.006PC1 0.49 · PC2 1.11PC1 0.3707 · PC2 1.13PC1 0.4642 · PC2 0.8659PC1 0.496 · PC2 0.8531PC1 0.6225 · PC2 0.9171PC1 -0.5495 · PC2 0.6396PC1 0.2204 · PC2 0.961PC1 -0.265 · PC2 0.8447PC1 0.3129 · PC2 0.8738PC1 0.4879 · PC2 0.9451PC1 0.3045 · PC2 0.003693PC1 -0.03825 · PC2 0.1451PC1 0.5747 · PC2 0.1965PC1 -0.3826 · PC2 0.05285PC1 -0.7241 · PC2 -0.1801PC1 0.5302 · PC2 0.2164PC1 0.3384 · PC2 0.3116PC1 1.542 · PC2 1.698PC1 0.3405 · PC2 0.5776PC1 0.08958 · PC2 -0.01005PC1 -2.182 · PC2 -0.2047PC1 0.1999 · PC2 0.2059PC1 1.016 · PC2 0.2377PC1 -0.2529 · PC2 -0.1862PC1 -0.1133 · PC2 0.1942PC1 1.708 · PC2 1.203PC1 -0.1433 · PC2 0.0646PC1 0.5986 · PC2 0.4206PC1 -0.2205 · PC2 0.9338PC1 -0.6926 · PC2 0.8405PC1 -1.331 · PC2 0.8849PC1 -1.186 · PC2 1.087PC1 -2.132 · PC2 0.816PC1 -2.421 · PC2 0.51PC1 -5.108 · PC2 -0.489PC1 -4.498 · PC2 -0.287PC1 -4.272 · PC2 -0.1933PC1 -5.155 · PC2 -0.5343PC1 -3.041 · PC2 0.04021PC1 -4.331 · PC2 -0.1891PC1 -2.887 · PC2 -0.7545PC1 -1.111 · PC2 0.08062PC1 0.1222 · PC2 0.4169PC1 0.1434 · PC2 0.4809PC1 -0.364 · PC2 0.06002PC1 1.646 · PC2 0.6715PC1 0.605 · PC2 0.4209PC1 -1.268 · PC2 0.3806PC1 -0.7939 · PC2 0.3586PC1 -4.993 · PC2 -0.6199PC1 -0.9154 · PC2 0.2222PC1 -3.949 · PC2 -0.1326PC1 -3.852 · PC2 -0.2176PC1 -1.596 · PC2 0.4121PC1 -2.061 · PC2 0.4183PC1 -1.62 · PC2 0.2988PC1 -1.893 · PC2 -0.1359PC1 -1.16 · PC2 0.262PC1 0.04524 · PC2 0.6892PC1 -0.2728 · PC2 0.4095PC1 -0.3536 · PC2 0.4808PC1 0.2622 · PC2 0.1746PC1 -0.1979 · PC2 -0.542PC1 1.574 · PC2 -0.122PC1 1.611 · PC2 -0.1538PC1 1.682 · PC2 -0.2554PC1 1.206 · PC2 -0.4693PC1 1.468 · PC2 -0.3622PC1 0.6816 · PC2 0.048PC1 -1.025 · PC2 -0.1648PC1 1.266 · PC2 0.1595PC1 1.473 · PC2 -0.06041PC1 0.4323 · PC2 -0.3252PC1 0.7469 · PC2 -0.0645PC1 1.962 · PC2 -1.024PC1 2.178 · PC2 -0.7464PC1 2.097 · PC2 -0.5538PC1 1.025 · PC2 0.1425PC1 1.404 · PC2 -0.3416PC1 1.259 · PC2 -0.5811PC1 0.9795 · PC2 -0.2742PC1 0.5524 · PC2 -0.04546PC1 0.7398 · PC2 -0.1788PC1 0.647 · PC2 0.01333PC1 0.7861 · PC2 -0.2854PC1 1.438 · PC2 -0.2092PC1 3.621 · PC2 -0.486PC1 3.462 · PC2 -0.6468PC1 2.942 · PC2 -0.4182PC1 3.022 · PC2 -0.513PC1 0.8788 · PC2 -0.399PC1 1.467 · PC2 -0.8176PC1 0.824 · PC2 -0.8988PC1 0.9077 · PC2 -0.3782PC1 0.9938 · PC2 -0.6089PC1 0.6402 · PC2 -0.9513PC1 0.1791 · PC2 -0.8502PC1 1.262 · PC2 -0.4777PC1 0.2876 · PC2 0.03177PC1 0.6043 · PC2 -0.1374PC1 0.5794 · PC2 0.1347PC1 0.7841 · PC2 0.03928PC1 0.8448 · PC2 0.02437PC1 0.6322 · PC2 -0.03003PC1 1.572 · PC2 -0.6211PC1 1.952 · PC2 -0.3166PC1 1.893 · PC2 -0.5401PC1 1.707 · PC2 -0.4062PC1 0.8866 · PC2 -0.2419PC1 -0.3958 · PC2 -0.2687PC1 0.981 · PC2 -0.3549PC1 0.6894 · PC2 -0.444PC1 0.7765 · PC2 -0.2788PC1 1.194 · PC2 -0.3347PC1 2.052 · PC2 -0.1638PC1 0.2473 · PC2 -0.4282PC1 -3.458 · PC2 -0.7977PC1 -3.497 · PC2 -0.9325PC1 1.007 · PC2 -0.4121PC1 1.801 · PC2 -0.5164PC1 1.595 · PC2 -0.1279PC1 0.6732 · PC2 -0.1364PC1 1.257 · PC2 -0.2823PC1 0.5008 · PC2 -0.4601PC1 0.677 · PC2 -0.4434PC1 0.2279 · PC2 -0.4109PC1 1.325 · PC2 -0.7673PC1 0.7612 · PC2 -0.8099PC1 0.9112 · PC2 -0.6269PC1 0.2628 · PC2 -0.5726PC1 0.798 · PC2 -0.6182PC1 0.2895 · PC2 -0.7106PC1 1.336 · PC2 -0.3973PC1 1.345 · PC2 -0.3948PC1 0.8105 · PC2 -0.7142PC1 0.7328 · PC2 -0.7404PC1 1.003 · PC2 -0.2982PC1 1.103 · PC2 0.6894PC1 -1.897 · PC2 0.06055PC1 -2.298 · PC2 -0.03592PC1 -1.236 · PC2 0.1951PC1 0.122 · PC2 0.3596PC1 -0.4152 · PC2 0.1854PC1 0.8632 · PC2 0.7718PC1 0.4877 · PC2 0.7984PC1 -0.1739 · PC2 0.03365PC1 0.6237 · PC2 0.9765PC1 -0.2339 · PC2 0.6061PC1 0.8186 · PC2 0.8379PC1 -0.7513 · PC2 0.63PC1 -0.4134 · PC2 0.5258PC1 -0.5991 · PC2 0.5218PC1 -0.5661 · PC2 0.4552PC1 -0.1971 · PC2 0.7346PC1 -0.3562 · PC2 0.5626PC1 -1.035 · PC2 0.2803PC1 -0.4982 · PC2 0.2772PC1 -0.5784 · PC2 0.4126PC1 -0.7344 · PC2 0.08531PC1 -0.5934 · PC2 0.3037PC1 -0.8761 · PC2 0.4399PC1 0.1955 · PC2 0.2676PC1 -0.1707 · PC2 0.3091PC1 -0.3697 · PC2 0.2215PC1 -0.4319 · PC2 0.3122PC1 -0.4095 · PC2 0.2044PC1 0.5363 · PC2 0.359PC1 0.9018 · PC2 0.5632PC1 0.0485 · PC2 0.3704PC1 0.4334 · PC2 0.5899PC1 0.2637 · PC2 0.4845PC1 -0.453 · PC2 0.122PC1 -1.214 · PC2 -0.004768PC1 (81.7%)PC2 (12.8%)325 scores
PCA explained variance0%25%50%75%100%PC1: 81.7% (cumulative 81.7%)1PC2: 12.8% (cumulative 94.5%)2PC3: 2.6% (cumulative 97.2%)3PC4: 1.2% (cumulative 98.4%)4PC5: 0.6% (cumulative 99.0%)5PC6: 0.4% (cumulative 99.4%)6PC7: 0.2% (cumulative 99.6%)7PC8: 0.1% (cumulative 99.7%)8PC9: 0.1% (cumulative 99.8%)9PC10: 0.0% (cumulative 99.8%)10cumulative explained variancePC variancecumulativeprincipal component · cumulative (dashed)
X-Y spectral correlation 13
X · alpha spectral correlation-1-0.500.51absolute correlation envelopesigned correlationabsolute correlation01,0002,0003,000|r|signed raxis · Pearson correlation scale
X · ETRmax spectral correlation-1-0.500.51absolute correlation envelopesigned correlationabsolute correlation01,0002,0003,000|r|signed raxis · Pearson correlation scale
X · Ik spectral correlation-1-0.500.51absolute correlation envelopesigned correlationabsolute correlation01,0002,0003,000|r|signed raxis · Pearson correlation scale
Targetmax |r|axis @ maxmean |r||r| ≥ .5
alpha0.1943710.1380.0%
ETRmax0.233570.1560.0%
Ik0.2073450.1280.0%
Fv_Fm0.1494990.03520.0%
qN0.1693540.05150.0%
qP0.3911,6660.3160.0%
CaS0.4127060.2010.0%
CbS0.3777060.1660.0%
CxcS0.3032,3000.1960.0%
Ca_Cb0.1631,3840.07040.0%
Cab_Cxc0.5641,8890.27216.7%
DMC0.5951,8600.36735.7%
LMA0.7472,2900.4146.8%

Metric interpretation reference

Metric catalog 29
FamilleMétriqueCe qu’elle détecteForte valeur =Faible valeur =Causes typiquesCalcul / score
Intégrité des donnéesNaN ratioDonnées manquantesSpectre corrompuSpectre completErreur acquisition/exportcount(isnan(X)) / X.sizealert = min(1, nan_ratio / 0.05)
Intégrité des donnéesInf countValeurs infiniesCorruptionNormalCalculs invalidescount(isinf(X))alert = min(1, inf_count / 1)
Intégrité des donnéesZero ratioColonnes ou cellules nullesSpectre tronquéNormalExport, saturationcount(X == 0) / count(finite X)alert = min(1, zero_ratio / 0.05)
Amplitude globaleMean reflectanceNiveau moyenTrop clair / fond visibleTrop sombreFond, géométriemean(X finite)alert reuses baseline/shape drift because absolute reflectance ranges are technology-dependent
Amplitude globaleArea under curveIntensité globaleDifférence d'éclairementNormalDistance sondetrapezoid(mean_spectrum, spectral_axis)alert reuses baseline/shape drift because area scale depends on axis and units
Amplitude globalePeak-to-peak (PTP)DynamiqueVariabilité forteSpectre platSaturationmax(mean_spectrum) - min(mean_spectrum)alert increases when dynamic range is abnormally flat
Amplitude globaleVarianceVariabilité spectraleNormal ou hétérogèneSpectre platMauvais contactvar(X finite)alert increases when variance/dynamic range is abnormally flat
BruitNoise RMSBruit haute fréquenceBruitéStableLampe, détecteurmedian MAD(second derivative) * 1.4826 / sqrt(6)alert = noise_rms / signal_scale, saturated at 5%
BruitSNRQualité signalBon signalMauvais signalAcquisitionmean(abs(X)) / noise_rmsalert decreases with SNR dB; >=40 dB is treated as low alert
BruitBandwise SNRBruit localiséZone fiableZone problématiqueDétecteurmin(abs(mean_spectrum) / local second-derivative noise)alert decreases with worst-band SNR dB; >=35 dB is treated as low alert
Artefacts locauxSpike countPics étroitsArtefactsSpectre propreCosmic rays, splicecount robust outliers in second derivativealert follows spike_rate, saturated at 1%
Artefacts locauxSpike rateDensité de picsSpectre suspectNormalInterpolationspike_count / (n_samples * (n_features - 2))alert = min(1, spike_rate / 0.01)
Artefacts locauxJump countDiscontinuitésRaccord détecteurContinuSplicecount robust outliers in first derivativealert follows jump_rate, saturated at 1%
Artefacts locauxJump rateFréquence de sautsProblème spectralNormalCalibrationjump_count / (n_samples * (n_features - 1))alert = min(1, jump_rate / 0.01)
Artefacts locauxClip fractionSaturationClippingNormalDétecteur saturéfraction of finite cells equal to repeated min/max extremaalert = min(1, clip_fraction / 0.01)
Forme spectraleBaseline slopePente globaleDériveStableÉclairementlinear slope of mean_spectrum over normalized axisalert = abs(slope / signal_scale), saturated at 0.5
Forme spectraleCurvature RMSCourbureForme inhabituelleLisseFond, splicemedian RMS(second derivative per spectrum)alert = curvature_rms / signal_scale, saturated at 1%
Forme spectraleD1 RMSVariabilité localeSpectre structuréPlatBiologie ou artefactmedian RMS(first derivative per spectrum)alert = d1_rms / signal_scale, saturated at 5%
Outliers multivariésPCA Q (SPE)Non expliqué par PCASpectre atypiqueConformeArtefact, mélangep95(Q/SPE residual) / median(Q/SPE residual)alert = min(1, pca_q_ratio / 8)
Outliers multivariésHotelling T²Extrême dans PCAExtrême mais cohérentCentralVariabilité naturellep95(Hotelling T2) / median(Hotelling T2)alert = min(1, hotelling_t2_ratio / 8)
Outliers multivariésMahalanobis HDistance au nuageOutlier globalPopulation normaleDomaine différentp95(sqrt(T2)) / median(sqrt(T2))alert = min(1, mahalanobis_h_ratio / 4)
Comparaison à référenceRMS to mean spectrumDistance moyenneSpectre différentTypiqueDomain shiftp95 RMS distance to dataset mean spectrumalert = RMS_p95 / signal_scale, saturated at 25%
Comparaison à référenceSpectral Angle Mapper (SAM)Différence de formeForme différenteSimilaireFond, géométriep95 spectral angle to dataset mean spectrumalert = min(1, SAM_p95 / 0.35 rad)
RépétabilitéRMS intra-IDReproductibilitéMauvaise répétabilitéStablePositionnementmedian RMS distance to repeated-sample centroidalert = RMS_intra_ID / signal_scale, saturated at 10%
RépétabilitéSAM intra-IDVariation de formeInstableStableAcquisitionmedian SAM to repeated-sample centroidalert = min(1, SAM_intra_ID / 0.15 rad)
RépétabilitéCV intra-IDVariabilité interneMauvais contrôleStableOpérateurmedian within-ID band CValert = min(1, CV_intra_ID / 0.25)
Structure du datasetPCA score densityClustersSous-populationsHomogèneLots différents1 / median kNN distance in PCA score spacealert follows density_cv/profile structure complexity, not raw density alone
Structure du datasetLocal Outlier Factor (LOF)Anomalie localeSpectre isoléPopulation normaleCas raresp95 approximate LOF from PCA-score kNN distancesalert = min(1, max(0, LOF_p95 - 1) / 2)
Structure du datasetIsolation Forest scoreAnomalie globaleSpectre atypiqueNormalDiverses causesp95 IsolationForest anomaly score on PCA scoresalert follows structure complexity; raw score is implementation-dependent
Technology-specific extensions
TechnologieAdaptations / métriquesAnomalies cibléesCommentaire pratique
UV-Vis 300-1000 nmBaseline, pente globale, dérive aux bords 300-350 et 900-1000; métriques par zonesLumière parasite, mauvais blanc, saturation, faible signal aux extrémitésLes bords sont souvent instables; calculer aussi des scores edge/middle.
UV-Vis 300-1000 nmSaturation / clipping proche absorbance max ou réflectance maxSignal écrêtéTrès important si absorption forte.
UV-Vis 300-1000 nmRed-edge, position de maximum, ratios de bandes si végétalDécalage biologique ou artefact optiqueAide à distinguer changement réel et problème d'acquisition.
UV-Vis 300-1000 nmSmoothness / roughness indexBruit haute fréquenceSouvent plus informatif que le SNR seul.
MIR / ATR-FTIRATR contact quality index: intensité globale, aire totale, profondeur des bandes clésMauvais contact cristal-échantillonCrucial: beaucoup d'anomalies viennent du contact ATR.
MIR / ATR-FTIRCO2 / H2O atmospheric bandsMauvaise correction atmosphériquePics parasites fréquents.
MIR / ATR-FTIRBaseline curvature / rubber-band residualDiffusion, contact, dérive baselineTrès utile avant PCA.
MIR / ATR-FTIRPeak position shiftMauvais alignement spectral / calibrationImportant en FTIR car de petits shifts comptent.
MIR / ATR-FTIRBand area ratios sur bandes connuesSpectre chimiquement incohérentÀ adapter par matrice: polysaccharides, protéines, lipides, etc.
HS-MSTotal Ion Current (TIC), Base Peak Intensity (BPI)Injection faible, ionisation instableÉquivalent MS du niveau global spectral.
HS-MSNombre de pics détectésSpectre pauvre ou trop bruitéTrop peu = mauvais signal; trop = bruit/contamination.
HS-MSMass accuracy / m/z driftProblème calibration masseFondamental en HRMS.
HS-MSRetention time drift si LC/GC-MSDérive chromatographiqueÀ suivre sur standards/QC pools.
HS-MSBlank contamination scoreContaminants / carry-overComparer échantillons vs blancs.
HS-MSInternal standard CVVariabilité instrumentaleTrès robuste si standards disponibles.
HS-MSMissingness par featureInstabilité de détectionCrucial pour filtrer les variables.
Avec répétitionsRMS intra-échantillonRépétabilité globaleApplicable à toutes les technologies.
Avec répétitionsSAM / corrélation intra-échantillonRépétabilité de formeTrès utile pour spectres.
Avec répétitionsCV intra-échantillon par bande / featureRépétabilité localeDétecte les zones instables.
Avec répétitionsICC ou variance componentsPart variance échantillon vs techniqueTrès utile si plusieurs répétitions par sample.
Avec répétitionsDistance au centroïde intra-IDRépétition aberrantePermet de flagger la mauvaise répétition plutôt que le sample entier.
Bug-hunting / supervised audits
Famille de bug potentielMéthodes à ajouterCe que ça détecteÉtat dans l’explorateur
Shift spectral globalCorrélation spectre moyen inter-dataset, DTW, cross-correlation, comparaison positions de picsDécalage en longueur d'onde, mauvais alignement, interpolation différentePartiellement calculé: cross-correlation lag et dispersion des positions de pics vs spectre moyen.
Baseline / offset / gainRégression chaque spectre vs spectre moyen: x = a + b ref + residual; suivi de a, b, RMS résiduelOffset additif, effet multiplicatif, dérive de baselineCalculé dans reference.affine_*.
Mélange de lignes / mauvais appariement X-M-YVérification index, hash des lignes, duplication ID, distance spectrale intra-ID, labels incohérentsLignes mélangées, metadata mal alignées, Y attribué au mauvais spectrePartiellement couvert par répétabilité intra-ID; checks index/hash à ajouter au pipeline canonical.
Fuite d'information / répétitions mal splitéesGroupKFold par sample_id vs StratifiedKFold random; audit des partitions par sample_idPerformance artificiellement bonne due aux répétitionsNécessite splits et benchmark modèle; non calculé par la carte descriptive.
Label bugsÉchantillons proches en X mais Y différents, confident learning, erreurs systématiques FP/FNY inversés, erreurs de saisie, classes ambiguësNécessite Y et/ou modèle; recommandé pour l'explorateur supervisé.
Sous-domaines cachésPCA/UMAP/t-SNE + clustering non supervisé + association avec dataset/Y/date/operatorLots, campagnes, sondes, backgrounds non renseignésPartiellement calculé par structure PCA/LOF; UMAP/t-SNE hors carte statique.
Artefacts localisés inconnusCarte wavelength x dataset: différence moyenne, différence variance, KS par longueur d'ondeRégions spectrales anormales non anticipéesÀ calculer au niveau banque quand plusieurs datasets partagent un axe spectral.
Ruptures instrumentalesDiscontinuités dans dérivées, changepoint detectionSplice, raccord détecteur, saut local non prévuCalculé par jump/spike rates; changepoint plus avancé à ajouter.
Mélange / contamination spectraleNMF / unmixing / reconstruction par convex hullComposante externe: fond, plastique, solNon calculé automatiquement; nécessite hypothèses de composants ou grande bibliothèque.
Features instables mais prédictivesImportance modèle vs instabilité QC par variableModèle qui apprend un artefact plutôt qu'un signal biologiqueNécessite modèle supervisé; recommandé pour rapports de benchmark.

Variables

Targets 13

alpha

target · numeric
alpha distribution02040600.086 – 0.09483: 10.09483 – 0.1037: 20.1037 – 0.1125: 30.1125 – 0.1213: 10.1213 – 0.1302: 30.1302 – 0.139: 00.139 – 0.1478: 30.1478 – 0.1567: 90.1567 – 0.1655: 10.1655 – 0.1743: 80.1743 – 0.1832: 70.1832 – 0.192: 110.192 – 0.2008: 220.2008 – 0.2097: 220.2097 – 0.2185: 380.2185 – 0.2273: 410.2273 – 0.2362: 390.2362 – 0.245: 260.245 – 0.2538: 320.2538 – 0.2627: 260.2627 – 0.2715: 160.2715 – 0.2803: 90.2803 – 0.2892: 20.2892 – 0.298: 20.010.020.050.10.20.51
n / missing325 / 1
Mean ± SD0.2213 ± 0.0359
Median0.225
Range0.086 – 0.298
CV0.162
Skew / kurtosis-1 / 1.7
Normal?no

ETRmax

target · numeric
ETRmax distribution05010015023.9 – 62.8: 862.8 – 101.7: 46101.7 – 140.6: 116140.6 – 179.5: 99179.5 – 218.4: 27218.4 – 257.3: 15257.3 – 296.2: 3296.2 – 335.1: 1335.1 – 374: 1374 – 412.9: 0412.9 – 451.8: 0451.8 – 490.8: 0490.8 – 529.7: 0529.7 – 568.6: 1568.6 – 607.5: 0607.5 – 646.4: 0646.4 – 685.3: 0685.3 – 724.2: 2724.2 – 763.1: 1763.1 – 802: 0802 – 840.9: 0840.9 – 879.8: 0879.8 – 918.7: 0918.7 – 957.6: 402505007501,000
n / missing325 / 1
Mean ± SD157.2 ± 116
Median137.1
Range23.9 – 957.6
CV0.739
Skew / kurtosis5.1 / 30
Normal?no

Ik

target · numeric
Ik distribution050100150287.2 – 439.4: 37439.4 – 591.5: 104591.5 – 743.7: 98743.7 – 895.8: 42895.8 – 1048: 121048 – 1200: 91200 – 1352: 51352 – 1504: 21504 – 1657: 51657 – 1809: 11809 – 1961: 11961 – 2113: 02113 – 2265: 02265 – 2417: 02417 – 2570: 02570 – 2722: 02722 – 2874: 02874 – 3026: 03026 – 3178: 23178 – 3330: 03330 – 3483: 03483 – 3635: 43635 – 3787: 13787 – 3939: 101,0002,0003,0004,000
n / missing325 / 1
Mean ± SD729.2 ± 503
Median614.8
Range287.2 – 3939
CV0.69
Skew / kurtosis4.3 / 21
Normal?no

Fv_Fm

target · numeric
Fv_Fm distribution02040600.423 – 0.4405: 10.4405 – 0.4581: 00.4581 – 0.4756: 00.4756 – 0.4932: 10.4932 – 0.5107: 00.5107 – 0.5282: 10.5282 – 0.5458: 20.5458 – 0.5633: 20.5633 – 0.5809: 00.5809 – 0.5984: 30.5984 – 0.616: 40.616 – 0.6335: 40.6335 – 0.651: 60.651 – 0.6686: 140.6686 – 0.6861: 200.6861 – 0.7037: 200.7037 – 0.7212: 390.7212 – 0.7388: 470.7388 – 0.7563: 390.7563 – 0.7738: 400.7738 – 0.7914: 330.7914 – 0.8089: 260.8089 – 0.8265: 180.8265 – 0.844: 40.10.20.51
n / missing325 / 1
Mean ± SD0.7326 ± 0.0597
Median0.738
Range0.423 – 0.844
CV0.0815
Skew / kurtosis-1.3 / 3.3
Normal?no

qN

target · numeric
qN distribution02040600 – 0.0395: 30.0395 – 0.079: 10.079 – 0.1185: 10.1185 – 0.158: 40.158 – 0.1975: 60.1975 – 0.237: 40.237 – 0.2765: 50.2765 – 0.316: 60.316 – 0.3555: 30.3555 – 0.395: 140.395 – 0.4345: 160.4345 – 0.474: 220.474 – 0.5135: 240.5135 – 0.553: 410.553 – 0.5925: 450.5925 – 0.632: 460.632 – 0.6715: 340.6715 – 0.711: 230.711 – 0.7505: 130.7505 – 0.79: 80.79 – 0.8295: 30.8295 – 0.869: 00.869 – 0.9085: 10.9085 – 0.948: 10.000.250.500.751.00
n / missing325 / 1
Mean ± SD0.537 ± 0.152
Median0.561
Range0 – 0.948
CV0.283
Skew / kurtosis-0.99 / 1.5
Normal?no

qP

target · numeric
qP distribution020400.133 – 0.1691: 10.1691 – 0.2052: 10.2052 – 0.2414: 10.2414 – 0.2775: 20.2775 – 0.3136: 40.3136 – 0.3498: 60.3498 – 0.3859: 80.3859 – 0.422: 80.422 – 0.4581: 140.4581 – 0.4942: 230.4942 – 0.5304: 170.5304 – 0.5665: 230.5665 – 0.6026: 290.6026 – 0.6387: 190.6387 – 0.6749: 370.6749 – 0.711: 310.711 – 0.7471: 280.7471 – 0.7833: 240.7833 – 0.8194: 210.8194 – 0.8555: 130.8555 – 0.8916: 30.8916 – 0.9277: 40.9277 – 0.9639: 30.9639 – 1: 40.000.250.500.751.00
n / missing325 / 1
Mean ± SD0.6259 ± 0.153
Median0.6435
Range0.133 – 1
CV0.245
Skew / kurtosis-0.31 / 0.042
Normal?yes

CaS

target · numeric
CaS distribution05101516 – 17.89: 217.89 – 19.78: 019.78 – 21.67: 321.67 – 23.56: 423.56 – 25.45: 725.45 – 27.34: 927.34 – 29.23: 929.23 – 31.12: 1031.12 – 33.01: 933.01 – 34.9: 634.9 – 36.79: 936.79 – 38.67: 1538.67 – 40.56: 740.56 – 42.45: 1142.45 – 44.34: 844.34 – 46.23: 746.23 – 48.12: 548.12 – 50.01: 950.01 – 51.9: 551.9 – 53.79: 353.79 – 55.68: 455.68 – 57.57: 457.57 – 59.46: 059.46 – 61.35: 4102050100
n / missing325 / 175
Mean ± SD38.01 ± 10.3
Median37.71
Range16 – 61.35
CV0.27
Skew / kurtosis0.21 / -0.63
Normal?yes

CbS

target · numeric
CbS distribution0510153.474 – 3.932: 23.932 – 4.39: 04.39 – 4.847: 44.847 – 5.305: 65.305 – 5.763: 65.763 – 6.221: 56.221 – 6.678: 66.678 – 7.136: 127.136 – 7.594: 67.594 – 8.051: 128.051 – 8.509: 118.509 – 8.967: 78.967 – 9.424: 129.424 – 9.882: 119.882 – 10.34: 1110.34 – 10.8: 1010.8 – 11.26: 511.26 – 11.71: 711.71 – 12.17: 212.17 – 12.63: 412.63 – 13.09: 413.09 – 13.54: 213.54 – 14: 314 – 14.46: 2125102050100
n / missing325 / 175
Mean ± SD8.804 ± 2.39
Median8.619
Range3.474 – 14.46
CV0.271
Skew / kurtosis0.14 / -0.46
Normal?yes

CxcS

target · numeric
CxcS distribution01020306.231 – 7.027: 47.027 – 7.823: 57.823 – 8.619: 18.619 – 9.414: 129.414 – 10.21: 510.21 – 11.01: 1211.01 – 11.8: 2111.8 – 12.6: 1112.6 – 13.39: 1213.39 – 14.19: 1614.19 – 14.99: 914.99 – 15.78: 915.78 – 16.58: 716.58 – 17.37: 617.37 – 18.17: 618.17 – 18.97: 218.97 – 19.76: 219.76 – 20.56: 220.56 – 21.35: 121.35 – 22.15: 222.15 – 22.94: 222.94 – 23.74: 023.74 – 24.54: 224.54 – 25.33: 1125102050100
n / missing325 / 175
Mean ± SD13.31 ± 3.78
Median12.8
Range6.231 – 25.33
CV0.284
Skew / kurtosis0.77 / 0.74
Normal?no

Ca_Cb

target · numeric
Ca_Cb distribution0510153.359 – 3.45: 23.45 – 3.541: 63.541 – 3.633: 13.633 – 3.724: 13.724 – 3.815: 103.815 – 3.907: 63.907 – 3.998: 103.998 – 4.089: 74.089 – 4.181: 134.181 – 4.272: 104.272 – 4.363: 94.363 – 4.455: 134.455 – 4.546: 154.546 – 4.637: 104.637 – 4.728: 94.728 – 4.82: 84.82 – 4.911: 64.911 – 5.002: 65.002 – 5.094: 35.094 – 5.185: 25.185 – 5.276: 15.276 – 5.368: 15.368 – 5.459: 15.459 – 5.55: 112510
n / missing325 / 174
Mean ± SD4.342 ± 0.44
Median4.366
Range3.359 – 5.55
CV0.101
Skew / kurtosis0.032 / -0.29
Normal?yes

Cab_Cxc

target · numeric
Cab_Cxc distribution010201.908 – 2.037: 32.037 – 2.165: 32.165 – 2.293: 32.293 – 2.422: 22.422 – 2.55: 32.55 – 2.679: 52.679 – 2.807: 32.807 – 2.936: 32.936 – 3.064: 53.064 – 3.192: 73.192 – 3.321: 83.321 – 3.449: 103.449 – 3.578: 123.578 – 3.706: 123.706 – 3.835: 63.835 – 3.963: 123.963 – 4.092: 164.092 – 4.22: 134.22 – 4.348: 64.348 – 4.477: 84.477 – 4.605: 44.605 – 4.734: 44.734 – 4.862: 14.862 – 4.991: 212510
n / missing325 / 174
Mean ± SD3.6 ± 0.685
Median3.661
Range1.908 – 4.991
CV0.19
Skew / kurtosis-0.54 / -0.18
Normal?no

DMC

target · numeric
DMC distribution010200.1648 – 0.1738: 30.1738 – 0.1828: 80.1828 – 0.1917: 40.1917 – 0.2007: 110.2007 – 0.2097: 160.2097 – 0.2186: 90.2186 – 0.2276: 140.2276 – 0.2366: 120.2366 – 0.2455: 130.2455 – 0.2545: 110.2545 – 0.2635: 90.2635 – 0.2724: 60.2724 – 0.2814: 60.2814 – 0.2903: 70.2903 – 0.2993: 40.2993 – 0.3083: 20.3083 – 0.3172: 40.3172 – 0.3262: 20.3262 – 0.3352: 30.3352 – 0.3441: 10.3441 – 0.3531: 10.3531 – 0.3621: 10.3621 – 0.371: 40.371 – 0.38: 20.10.20.51
n / missing325 / 172
Mean ± SD0.2444 ± 0.0479
Median0.2365
Range0.1648 – 0.38
CV0.196
Skew / kurtosis0.88 / 0.4
Normal?no

LMA

target · numeric
LMA distribution05101536.38 – 42.82: 242.82 – 49.26: 449.26 – 55.7: 1055.7 – 62.15: 1062.15 – 68.59: 1268.59 – 75.03: 975.03 – 81.47: 1081.47 – 87.91: 387.91 – 94.36: 894.36 – 100.8: 6100.8 – 107.2: 10107.2 – 113.7: 13113.7 – 120.1: 8120.1 – 126.6: 8126.6 – 133: 7133 – 139.4: 5139.4 – 145.9: 6145.9 – 152.3: 4152.3 – 158.8: 5158.8 – 165.2: 3165.2 – 171.7: 4171.7 – 178.1: 2178.1 – 184.5: 2184.5 – 191: 1050100150200
n / missing325 / 173
Mean ± SD101.4 ± 37
Median102.7
Range36.38 – 191
CV0.364
Skew / kurtosis0.32 / -0.76
Normal?no

Metadata 1

year

metadata · numeric
year distribution0501001502,016 – 2016: 472016 – 2016: 02016 – 2016: 02016 – 2016: 02016 – 2016: 02016 – 2016: 02016 – 2017: 02017 – 2017: 02017 – 2017: 02017 – 2017: 02017 – 2017: 02017 – 2,017: 02,017 – 2017: 1332017 – 2017: 02017 – 2017: 02017 – 2017: 02017 – 2017: 02017 – 2018: 02018 – 2018: 02018 – 2018: 02018 – 2018: 02018 – 2018: 02018 – 2018: 02018 – 2,018: 1452,016.02,016.52,017.02,017.52,018.0
n / missing325 / 0
Mean ± SD2017 ± 0.708
Median2,017
Range2,016 – 2,018
CV0.000351
Skew / kurtosis-0.51 / -0.9
Normal?no
Constant metadata 18
  • ecosis_resource_id7859ba6d-ec43-41e9-999d-e67fbf4248f6
  • locationLake Hidvegi (Kis-Balaton), Mantua lakes system, Lake Varese
  • coordinate_precision_notessource-provided coordinates when available
  • plant_partLeaf
  • canopy_or_leafleaf
  • instrumentSpectral Evolution SR-3500
  • acquisition_modeContact
  • signal_typereflectance
  • axis_unitnm
  • axis_min345
  • axis_max2,503
  • n_points_original1,024
  • publication_doi10.1186/s13007-021-00816-4 | 10.21232/uq4HsfSY | 10.21232/uq4hsfsy
  • citationVilla P., Bolpagni R., Pinardi M. and Tóth V. R.. Leaf reflectance and tratis of floating and emergent macrophytes. Data set. Available on-line [http://ecosis.org] from the Ecological Spectral Information System (EcoSIS). 10.21232/uq4HsfSY
  • licenseCreative Commons Non-Commercial (Any)
  • rights_statusexplicit_restricted
  • usage_scopeprivate_use_only
  • notesEcoSIS package leaf-reflectance-and-tratis-of-floating-and-emergent-macrophytes, no interpolation applied by project.

8 variable(s) omitted (no recorded values).

Alignment

Alignment levelobservation
Sample id availableyes
Samples325
Observations (total)325
Reps per samplemin 1 · mean 1 · max 1

Provenance & citation

ContributorLeaf reflectance and tratis of floating and emergent macrophytes
Origin · url [open]https://data.ecosis.org/dataset/leaf-reflectance-and-tratis-of-floating-and-emergent-macrophytes
Origin · script [manual]source_to_standard.py — standardization script (maintainer-only)
Publication10.1186/s13007-021-00816-4 — Leaf reflectance can surrogate foliar economics better than physiological traits across macrophyte species
Publication10.21232/uq4HsfSY — Leaf reflectance and tratis of floating and emergent macrophytes
Publication10.21232/uq4hsfsy

Governance & integrity

Tierprivate
LicenseLicenseRef-not-cleared
Permitted useResearch and benchmarking; private use only.
Access policyManual download / private-use-only per source.
RedistributionEcoSIS license is restricted or non-commercial; public redistribution of derived X/Y/M is not cleared in this pass.
Content version1.0.0
Schema / protocol2.0
Content hash52d7f8e0efeaefcb…
Processing hashc6d1bb07c1704d4c…
Metadata hash3ca21ce334630b5d…

Load this dataset

# pip install nirs4all-datasets
from nirs4all_datasets import get

# private dataset — export requires a Dataverse token
ds = get("ecosis_leaf_reflectance_and_tratis_of_floating_and_emergent_ma_reflectance_nirs", token="…")
X, y = ds.x(), ds.y()
print(X.shape, y.shape)

Metadata downloads are available for public datasets only. The dataset bytes are never served here — fetch them from the origin / DOI above.