Stacked Ensemble with Machine Learning Regressors on Optimal Features (SMOF) of hyperspectral sensor PRISMA for inland water turbidity prediction.

IF 5.8 3区 环境科学与生态学 0 ENVIRONMENTAL SCIENCES
Rajarshi Bhattacharjee, Shishir Gaur, Shard Chander, Anurag Ohri, Prashant K Srivastava, Anurag Mishra
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Abstract

Leveraging hyperspectral data across various domains yields substantial benefits, yet managing many spectral bands and identifying the essential ones poses a formidable challenge. This study identifies the most relevant bands within a hyperspectral data cube for turbidity prediction in inland water. Nine machine learning regressors Cat Boost, Decision Trees, Extra Trees, Gradient Boost, Light Gradient Boost (LightGBM), Recursive Feature Elimination (RFE), Random Forest, Support Vector Regressor (SVR), and Xtreme Gradient Boost (XGBoost) have been used to compute the feature importance of the hyperspectral bands for predicting turbidity. Random Forest has outperformed the other models with a mean absolute percentage error (MAPE) of 1.61%, and the R2 of the linear fit is 0.96. Band 77, with a central wavelength of 1067.61 nm, is the most dominating band regarding feature importance. We have also developed a novel framework for turbidity prediction: Stacked Ensemble with Machine Learning Regressors on Optimal Features (SMOF). It employs a stacking ensemble of the nine regressors mentioned above with Random Forest as both base and meta-model, leveraging feature selection outputs. With this framework, the MAPE (%) reached 1.21, while the R2 stood at 0.95. The present study also presents a simple statistical algorithm to detect noisy bands in the Hyperspectral Precursor of the Application Mission (PRISMA) data cube. The approach assesses quadrat-wise intra-band spatial coherence using Renyi's entropy thresholding for noisy band segregation. Radiometric calibration error and absorption due to water vapour are the two primary sources of noise within the data cube. Moreover, this research implements the open-source Water Colour Simulator (WASI) to simulate inland water spectra with varied proportions of turbidity. Overall, the study presents an approach to identify noisy bands and integrates the potential wavelengths for turbidity prediction of inland waters.

高光谱传感器 PRISMA 的最佳特征机器学习回归器堆叠集合(SMOF)用于内陆水域浊度预测。
在各个领域利用高光谱数据可产生巨大的效益,但管理众多光谱波段并识别基本波段是一项艰巨的挑战。本研究确定了高光谱数据立方体中与内陆水域浊度预测最相关的波段。九种机器学习回归器 Cat Boost、决策树、额外树、梯度提升、轻梯度提升 (LightGBM)、递归特征消除 (RFE)、随机森林、支持向量回归器 (SVR) 和 Xtreme Gradient Boost (XGBoost) 被用于计算预测浊度的高光谱波段的特征重要性。随机森林模型的平均绝对百分比误差 (MAPE) 为 1.61%,线性拟合的 R2 为 0.96,表现优于其他模型。中心波长为 1067.61 nm 的波段 77 是最重要的特征波段。我们还开发了一种新颖的浊度预测框架:最佳特征机器学习回归器堆叠集合(SMOF)。它采用了上述九个回归子的堆叠集合,以随机森林作为基础模型和元模型,并利用特征选择输出。在此框架下,MAPE(%)达到 1.21,而 R2 为 0.95。本研究还提出了一种简单的统计算法,用于检测高光谱应用任务前兆(PRISMA)数据立方体中的噪声带。该方法使用 Renyi 的熵阈值评估四分带内空间一致性,以进行噪声波段分离。辐射校准误差和水蒸气吸收是数据立方体中的两个主要噪声源。此外,这项研究还采用了开源的水色模拟器(WASI)来模拟不同浊度比例的内陆水域光谱。总之,该研究提出了一种识别噪声波段的方法,并整合了用于内陆水域浊度预测的潜在波长。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
8.70
自引率
17.20%
发文量
6549
审稿时长
3.8 months
期刊介绍: Environmental Science and Pollution Research (ESPR) serves the international community in all areas of Environmental Science and related subjects with emphasis on chemical compounds. This includes: - Terrestrial Biology and Ecology - Aquatic Biology and Ecology - Atmospheric Chemistry - Environmental Microbiology/Biobased Energy Sources - Phytoremediation and Ecosystem Restoration - Environmental Analyses and Monitoring - Assessment of Risks and Interactions of Pollutants in the Environment - Conservation Biology and Sustainable Agriculture - Impact of Chemicals/Pollutants on Human and Animal Health It reports from a broad interdisciplinary outlook.
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