Department of Civil Engineering, Bursa Technical University, Bursa, Turkey.
College of Hydrology and Water Resources, Hohai University, Nanjing, 210098, China.
Environ Sci Pollut Res Int. 2020 Apr;27(12):13131-13141. doi: 10.1007/s11356-020-07868-4. Epub 2020 Feb 3.
Field capacity (FC) and permanent wilting point (PWP) are two important properties of the soil when the soil moisture is concerned. Since the determination of these parameters is expensive and time-consuming, this study aims to develop and evaluate a new hybrid of artificial neural network model coupled with a whale optimization algorithm (ANN-WOA) as a meta-heuristic optimization tool in defining the FC and the PWP at the basin scale. The simulated results were also compared with other core optimization models of ANN and multilinear regression (MLR). For this aim, a set of 217 soil samples were taken from different regions located across the West and East Azerbaijan provinces in Iran, partially covering four important basins of Lake Urmia, Caspian Sea, Persian Gulf-Oman Sea, and Central-Basin of Iran. Taken samples included portion of clay, sand, and silt together with organic matter, which were used as independent variables to define the FC and the PWP. A 80-20 portion of the randomly selected independent and dependent variable sets were used in calibration and validation of the predefined models. The most accurate predictions for the FC and PWP at the selected stations were obtained by the hybrid ANN-WOA models, and evaluation criteria at the validation phases were obtained as 2.87%, 0.92, and 2.11% respectively for RMSE, R, and RRMSE for the FC, and 1.78%, 0.92, and 10.02% respectively for RMSE, R, and RRMSE for the PWP. It is concluded that the organic matter is the most important variable in prediction of FC and PWP, while the proposed ANN-WOA model is an efficient approach in defining the FC and the PWP at the basin scale.
田间持水量(FC)和永久萎蔫点(PWP)是土壤水分关注时的两个重要特性。由于这些参数的确定既昂贵又耗时,因此本研究旨在开发和评估一种新的人工神经网络模型与鲸鱼优化算法(ANN-WOA)的混合模型,作为定义流域尺度 FC 和 PWP 的元启发式优化工具。模拟结果还与其他 ANN 和多元线性回归(MLR)核心优化模型进行了比较。为此,从伊朗西部和东部阿塞拜疆省的不同地区采集了 217 组土壤样本,部分覆盖了乌鲁米耶湖、里海、波斯湾-阿曼海和伊朗中部流域等四个重要流域。采集的样本包括粘土、沙子和淤泥以及有机质的部分,这些被用作定义 FC 和 PWP 的独立变量。随机选择的独立和因变量集的 80-20 部分用于预定义模型的校准和验证。在选定的站点中,ANN-WOA 混合模型对 FC 和 PWP 进行了最准确的预测,在验证阶段的评估标准分别为 RMSE、R 和 RRMSE 为 2.87%、0.92 和 2.11%,对于 FC,RMSE、R 和 RRMSE 分别为 1.78%、0.92 和 10.02%,对于 PWP。结果表明,有机质是预测 FC 和 PWP 的最重要变量,而提出的 ANN-WOA 模型是定义流域尺度 FC 和 PWP 的有效方法。