How accurate is the remote sensing based estimate of water physico-chemical parameters in the Danube Delta (Romania)?

IF 1.7 3区 农林科学 Q2 FORESTRY Annals of Forest Research Pub Date : 2022-12-31 DOI:10.15287/afr.2022.2682
Maria-Cristina Necula, Iris Tusa, M. Sidoroff, C. Itcus, D. Florea, Alexandru Amarioarei, Andrei Păun, O. Pacioglu, M. M. Păun
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Abstract

The current paper estimated the physico-chemical properties of water in the Danube Delta (Romania), based on Sentinel 2 remote sensing data. Eleven sites from the Danube Delta were sampled in spring and autumn for three years (2018-2020) and 21 water physico-chemical parameters were measured in laboratory. Several families of machine learning algorithms, translated into hundreds of models with different parameterizations for each machine learning algorithm, based on remote sensing data input from Sentinel 2 spectral bands, were employed to find the best models that predicted the values measured in laboratory. This was a novel approach, reflected in the types of selected models that minimised the values of performance metrics for the tested parameters. For alkalinity, calcium, chloride, carbon dioxide, hardness, potassium, sodium, ammonium, dissolved oxygen, sulphates, and suspended matter the results were promising, with an overall percentage bias of the estimates of +/- 10% from the observed values. For copper, magnesium, nitrites, nitrates, turbidity and zinc the estimates were fairly accurate, with percentage biases in the interval +/- 10% - 20%, whereas for detergents, led, and phosphates the percentage bias was higher than 20%. Overall, the results of the current study showed fairly good estimates between remote sensing based estimates and laboratory measured values for most water physico-chemical parameters.
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基于遥感的多瑙河三角洲(罗马尼亚)水物理化学参数估计的准确性如何?
目前的论文根据Sentinel 2遥感数据估计了多瑙河三角洲(罗马尼亚)水的物理化学性质。在三年(2018-2020年)的春季和秋季,对多瑙河三角洲的11个地点进行了采样,并在实验室中测量了21个水的物理化学参数。基于从Sentinel 2谱带输入的遥感数据,几个机器学习算法家族被转化为数百个模型,每个机器学习算法具有不同的参数化,用于寻找预测实验室测量值的最佳模型。这是一种新颖的方法,反映在所选模型的类型上,使测试参数的性能指标值最小化。对于碱度、钙、氯化物、二氧化碳、硬度、钾、钠、铵、溶解氧、硫酸盐和悬浮物,结果是有希望的,估计值与观测值的总体百分比偏差为+/-10%。对于铜、镁、亚硝酸盐、硝酸盐、浊度和锌,估计值相当准确,百分比偏差在+/-10%-20%之间,而对于洗涤剂、铅和磷酸盐,百分比偏差高于20%。总体而言,目前的研究结果显示,大多数水物理化学参数的遥感估计值和实验室测量值之间的估计值相当不错。
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来源期刊
CiteScore
2.20
自引率
11.10%
发文量
11
审稿时长
12 weeks
期刊介绍: Annals of Forest Research is a semestrial open access journal, which publishes research articles, research notes and critical review papers, exclusively in English, on topics dealing with forestry and environmental sciences. The journal promotes high scientific level articles, by following international editorial conventions and by applying a peer-review selection process.
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