自回归综合移动平均与深度学习长短期记忆预报天气数据的比较性能分析

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摘要

关于天气的信息对协助人类活动和劳动是至关重要的,因为天气是一个不可分割的因素,与所有人类活动密切相关。本研究的目的是比较自回归综合移动平均(AIMA)和长短期记忆(LSTM)算法模型在天气预报中的表现。本研究对两种预测方法进行了比较,分别是AIMA和LSTM方法。LSTM方法对属性最低温度、最高温度和平均温度的预测效果最好,均方根误差小于1.45,平均绝对误差小于1.14。平均湿度和太阳辐射属性的均方根误差为2.62 ~ 3.82,平均绝对误差为2.21 ~ 3.2。降水预报误差值最高,均方根误差值为9.99,平均绝对误差为6.5。AIMA方法对属性最小温度、最高温度和平均温度的预测效果最好,均方根误差值小于1.47,平均绝对误差值小于1.16。对于日照属性,均方根误差值为2.91 ~ 3.05。平均湿度属性误差最大,均方根误差为4.97,平均绝对误差为3.99。LSTM方法在预测结果和计算时间上都较好。从每一次预报中,LSTM方法产生较小的误差值。
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Comparison performance analysis of autoregressive integrated moving average and deep learning long-short term memory forecasting weather data
Information about the weather is crucial in assisting human activities and labor because the weather is a factor that cannot be separated and is closely related to all human activities. The purpose this study to compare performance the Autoregressive Integrated Moving Average (AIMA) and Long-Short Term Memory (LSTM) algorithm models with case studies of weather forecasting. This study uses comparison of two methods, forecasting using AIMA and LSTM methods. LSTM method provides the best forecasting performance for attribute minimum temperature, maximum temperature, and average temperature with the Root mean squared error value below 1.45 and the Mean Absolute Error value below 1.14. For attributes of average humidity and solar radiation with a Root mean squared error value of 2.62 to 3.82 and a Mean Absolute Error value of 2.21 to 3.2. Precipitation forecasting has the highest error value with a root mean squared error value of 9.99 and a mean absolute error of 6.5. The AIMA method provides the best forecasting performance on the attribute minimum temperature, maximum temperature, and average temperature with the Root mean squared error value below 1.47 and the Mean Absolute Error value below 1.16. For the sun exposure attribute with a Root mean squared error value of 2.91 to 3.05. Whereas the average humidity attribute has the highest error with the Root mean squared error value reaching 4.97 and the Mean Absolute Error reaching 3.99. LSTM method is better in terms of forecasting results and in terms of computation time. From every forecast made, the LSTM method produces a smaller error value.
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