4) emission. M'/> Predicting Methane Emission from Paddy Fields with Limited Soil Data by Artificial Neural Networks
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Predicting Methane Emission from Paddy Fields with Limited Soil Data by Artificial Neural Networks

机译:利用人工神经网络预测土壤数据有限的稻田甲烷排放

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Paddy fields with flooded water are commonly known as the main source of methane (CH4) emission. Measurement of methane gas is complicated and costly due to utilizing advanced instrumentation such as Gas Chromatography (GC). In addition, some soil parameter data that is effected on methane emissions were sometimes limited. The current study proposed the artificial neural network (ANN) models to predict methane emission from paddy fields using soil parameters of soil moisture (SM), soil temperature (Ts) and soil electrical conductivity (EC). The models were performed based on the experimental data in one planting season during 20 January to 13 May 2018. The ANN models were developed by backpropagation learning algorithm. The sigmoid function was used as an activation function with three layer, i.e. input, hidden and output layers. There were six ANN models with different input parameters. Model 1 with three input parameters (SM, Ts, EC) was the best model with highest R2 (0.97) and lowest RMSE (32.9 mg/m2/d). However, the model needs more input parameters. The Model 2 can be used as an alternative to predict methane emission if there were only two measured parameter, i.e., SM and Ts. This model was fairly satisfied as indicated by R2 of 0.64 and moderate RMSE of 122.8 mg/m2/d
机译:具有淹水水的稻田通常称为甲烷的主要来源(CH 4 )排放。由于利用诸如气相色谱(GC)的先进仪器,甲烷气体的测量复杂且成本高。此外,一些在甲烷排放上进行的土壤参数数据有时是有限的。目前的研究提出了人工神经网络(ANN)模型,以预测土壤水分土壤参数(SM),土壤温度(TS)和土壤导电性(EC)的土壤参数来预测稻田的甲烷排放。该模型是基于1月20日至2018年5月13日的一个种植季节的实验数据进行的。ANN模型是由BackProjagation学习算法开发的。 SIGMOID函数用作具有三层的激活功能,即输入,隐藏和输出层。有六个ANN型号,具有不同的输入参数。模型1具有三个输入参数(SM,TS,EC)是最高r的最佳模型 2 (0.97)和最低的RMSE(32.9 mg / m 2 / d)。但是,该模型需要更多的输入参数。如果仅存在两个测量的参数,即SM和TS,则可以使用模型2作为预测甲烷发射的替代方案。此模型与R表示相当满意 2 0.64和122.8 mg / m的温和度 2 / D.

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