Using machine learning to correct for nonphotochemical quenching in high-frequency, in vivo fluorometer data

被引:11
|
作者
Lucius, Mark A. [1 ]
Johnston, Kenneth E. [1 ]
Eichler, Lawrence W. [1 ]
Farrell, Jeremy L. [1 ,2 ]
Moriarty, Vincent W. [3 ]
Relyea, Rick A. [1 ,2 ]
机构
[1] Rensselaer Polytech Inst, Darrin Fresh Water Inst, Bolton Landing, NY 12814 USA
[2] Rensselaer Polytech Inst, Dept Biol Sci, Troy, NY USA
[3] IBM Res, Yorktown Hts, NY USA
来源
LIMNOLOGY AND OCEANOGRAPHY-METHODS | 2020年 / 18卷 / 09期
基金
美国国家科学基金会;
关键词
CHLOROPHYLL FLUORESCENCE; PHYTOPLANKTON BIOMASS; FRESH-WATER; LIGHT CLIMATE; RANDOM FOREST; LAKE; PHOTOSYNTHESIS; CONSEQUENCES; IRRADIANCE; RADIATION;
D O I
10.1002/lom3.10378
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
In vivo fluorometers use chlorophyllafluorescence (F-chl) as a proxy to monitor phytoplankton biomass. However, the fluorescence yield ofF(chl)is affected by photoprotection processes triggered by increased irradiance (nonphotochemical quenching; NPQ), creating diurnal reductions inF(chl)that may be mistaken for phytoplankton biomass reductions. Published correction methods are mostly designed for pelagic oceans and are ill suited for inland waters or for high-frequency data collection. A machine learning-based method was developed to correct vertical profiler data from an oligotrophic lake. NPQ was estimated as a percent reduction inF(chl)by comparing daytime values to mean, unquenched values from the previous night. A random forest regression was trained on sensor data collected coincident withF(chl); including solar radiation, water temperature, depth, and dissolved oxygen saturation. The accuracy of the model was assessed using a grouped 10-fold cross validation (mean absolute error [MAE]: 7.6%; root mean square error [RMSE]: 10.2%), which was then used to correctF(chl)profiles. The model also predicted NPQ and corrected unseenF(chl)profiles from a future period with excellent results (MAE: 9.0%; RMSE: 14.4%).F(chl)profiles were then correlated to laboratory results, allowing corrected profiles to be compared directly to collected samples. The correction reduced error (RMSE) due to NPQ from 0.67 mu g L(-1)to 0.33 mu g L(-1)when compared to uncorrectedF(chl)data. These results suggest that the use of machine learning models may be an effective way to correct for NPQ and may have universal applicability.
引用
收藏
页码:477 / 494
页数:18
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