Comparative Analysis of Artificial Neural Network (ANN) and Wavelet Integrated Artificial Neural Network (W-ANN) Approaches for Rainfall Modeling of Southern Rajasthan, India

Vinayak Paradkar, H. K. Mittal
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Abstract

This paper addresses the challenge of predicting erratic rainfall in Rajasthan state of India, particularly in southern regions. Reliable rainfall predictions are crucial for water resource management and agriculture planning. The research involved selecting 58 stations across seven districts of southern Rajasthan and identifying the best fit computational neural (ANN) and wavelet integrated computational neural (W-ANN) architectures based on performance metrics. Different combinations of input characters, hidden layer neurons, learning algorithms, and training cycles were tested to determine optimal models. Hybrid models, combining wavelet analysis with ANN, were explored to tackle non-stationary hydrologic signals effectively. Results showed that ANN Model C with ten input layer neurons performed best for 74% of stations, followed by Model B (21% of stations) and Model A (5% of stations). Models with increased input and hidden layer neurons performed better. Among the selected stations, 81% of stations demonstrated improved performance using W-ANN models due to effective signal decomposition and information extraction. The hybrid W-ANN models outperformed simple ANN models for rainfall prediction. Both ANN and W-ANN models accurately forecasted weekly rainfall, as observed in the comparison of actual and forecasted values.
人工神经网络(ANN)与小波综合人工神经网络(W-ANN)方法在印度拉贾斯坦邦南部降雨建模中的比较分析
本文探讨了预测印度拉贾斯坦邦(尤其是南部地区)不稳定降雨量所面临的挑战。可靠的降雨预测对水资源管理和农业规划至关重要。研究涉及在拉贾斯坦邦南部的七个地区选择 58 个站点,并根据性能指标确定最合适的计算神经(ANN)和小波综合计算神经(W-ANN)架构。对输入字符、隐藏层神经元、学习算法和训练周期的不同组合进行了测试,以确定最佳模型。此外,还探索了小波分析与 ANN 相结合的混合模型,以有效处理非稳态水文信号。结果表明,具有 10 个输入层神经元的方差分析模型 C 在 74% 的站点中表现最佳,其次是模型 B(21% 的站点)和模型 A(5% 的站点)。输入层和隐藏层神经元越多的模型性能越好。在选定的台站中,由于有效的信号分解和信息提取,81% 的台站使用 W-ANN 模型后性能有所提高。在降雨预测方面,W-ANN 混合模型的表现优于简单的 ANN 模型。从实际值和预测值的比较中可以看出,ANN 模型和 W-ANN 模型都能准确预测每周的降雨量。
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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