基于粒子群优化和深度神经网络的人工智能气候参数估计

S. Yalçın, Musa Eşit, M. Yuce
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引用次数: 0

摘要

气候预报在水管理、农业、包括干旱和洪水在内的自然灾害、旅游、商业和区域投资等许多领域对人类生活起着重要作用。估计这些数据是一项困难的任务,因为时间序列气候参数值每月和季节都有变化。因此,基于学习和人工智能的气候参数预测对于这些领域的长期有效结果至关重要。为此,本研究提出了一种基于时间序列的长短期记忆(LSTM)深度神经网络来预测土耳其Çankırı和Adıyaman城市的未来气候。在该网络的帮助下,平均温度、相对湿度和降水值被称为最有效的气候参数。提出了一种改进的粒子群算法(PSO)来优化LSTM深度网络的输入权值,减小估计误差。将该算法与基于均方根误差(RMSE)、平均绝对偏差(MADE)和平均绝对百分比误差(MAPE)指标的LSTM变量深度模型进行比较。提出的自适应LSTM-PSO和非自适应LSTM-PSO模型对温度、相对湿度和降水的RMSE分别为0.98和1.05、1.19和1.27、4.21和4.67。自适应LSTM-PSO方法的均方根误差比非自适应LSTM-PSO方法低%7。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Climatological parameters estimation based on artificial intelligence techniques with particle swarm optimization and deep neural networks
Climate forecasting plays an important role for human life in many areas such as water management, agriculture, natural hazards including drought and flood, tourism, business, and regional investment. Estimating these data is a difficult task as the time series climate parameter values vary monthly and seasonally. Therefore, predicting climate parameters based on learning and artificial intelligence is important to long-term efficient results in these fields. For this purpose, in this study, a time-series based Long Short-Term Memory (LSTM) deep neural network is proposed to predict future climate in Çankırı and Adıyaman cities in Turkey. With the help of this network, the average temperature, relative humidity, and precipitation values, which are known as the most effective climate parameters, have been estimated. An improved Particle Swarm Optimization (PSO) technique is also proposed to optimize input weight values of the LSTM deep network, and reduce the estimation errors. The proposed algorithm is compared with deep models of LSTM variants based on Root Mean Square Error (RMSE), Mean Absolute Deviation (MADE), and Mean Absolute Percentage Error (MAPE) metrics. The proposed adaptive LSTM-PSO and non-adaptive LSTM-PSO models achieved at RMSE 0.98 and 1.05 for temperature, 1.19 and 1.27 for relative humidity, and 4.21 and 4.67 for precipitation estimation, respectively. The RMSE is %7 lower with the proposed adaptive LSTM-PSO method than proposed non-adaptive LSTM-PSO method.
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