Neural Network and Regression Methods for Estimation of the Average Daily Temperature of Hyderabad for the Years 2018-2020

Adeel Tahir, Mamnoon Akhter, Zaheer Uddin, Muhammad Sarim
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Abstract

A qualitative study on temperature distribution has been executed in Hyderabad by several researchers. This study, however, is the first attempt to study temperature distribution quantitatively. Two different methods, i.e., Artificial Neural Network (ANN) and Regression Analysis (RA), have been used to determine the average daily temperature distribution for Hyderabad, a city in Pakistan. Both the methods are used to predict the average daily temperature of the years; 2018, 2019, and 2020. In Neural Network (NN) analysis, the network was trained and validated for three years with temperature recorded from 2015-2017. With the help of training and validation parameters of the hidden layer, the average d aily temperature was predicted for 2018-2020. Based on input parameters (dew point, relative humidity, and wind speed), a multiple regression model was developed, and average daily temperature for the years 2018-2020 was predicted again. For validation of the model statistical errors, Root Mean Square Error (RMSE), Mean Absolute Error (MABE), Mean Absolute Percent Error (MAPE), and coefficient of determination are calculated. The statistical errors show that multiple regression models and neural network models provide a good prediction of temperature distribution. However, the results of the neural network are better than the regression model.
海得拉巴2018-2020年日平均气温估算的神经网络和回归方法
几位研究人员对海得拉巴的温度分布进行了定性研究。然而,这项研究是第一次尝试定量研究温度分布。采用人工神经网络(ANN)和回归分析(RA)两种不同的方法确定了巴基斯坦海得拉巴市的日平均温度分布。两种方法均用于预测历年日平均气温;2018年、2019年和2020年。在神经网络(NN)分析中,该网络在2015-2017年的温度记录下进行了三年的训练和验证。利用隐层的训练和验证参数,预测了2018-2020年的平均日气温。基于输入参数(露点、相对湿度和风速)建立多元回归模型,对2018-2020年的日平均气温进行了预测。为了验证模型的统计误差,计算均方根误差(RMSE)、平均绝对误差(MABE)、平均绝对百分比误差(MAPE)和决定系数。统计误差表明,多元回归模型和神经网络模型能较好地预测温度分布。然而,神经网络的结果优于回归模型。
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