Air Temperature Forecasting with Long Short-Term Memory and Prophet: A Case Study of Jakarta, Indonesia

Mohammad Daffa Haris, D. Adytia, Annas Wahyu Ramadhan
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引用次数: 2

Abstract

The high number of industrial and residential areas has reduced green space in Jakarta. This condition increases air temperature, contributing to climate change in Jakarta and most other big cities in Indonesia. Therefore, an accurate air temperature prediction model is needed to support daily public activities. On the other hand, the government can also use this prediction to determine regulations to suppress climate change. This study developed Jakarta’s air temperature prediction model using two machine learning models: Long Short-Term Memory (LSTM) and Prophet. LSTM is a variant of the classic Recurrent Neural Networks (RNN) with the addition of memory blocks that stores long-term information. The Prophet is an additive regression model developed by Facebook. These models are chosen to handle stochastic data such as air temperature. Here, we forecast the time series of air temperature based on sequential historical data. The accuracy of prediction is measured by using RMSE and Correlation Coefficient values. Results of the study indicate that the LSTM performs better for short-term forecasts, i.e., 2 to 48 hours, with RMSE values between 0.31 to 0.69. On the other hand, the Prophet model is suitable for more long-term predictions, i.e., 72 to 168 hours, with RMSE between 0.80 and 0.89.
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长短期记忆与先知的气温预报:以印尼雅加达为例
大量的工业区和住宅区减少了雅加达的绿色空间。这种情况增加了气温,导致雅加达和印度尼西亚大多数其他大城市的气候变化。因此,需要一个准确的气温预报模型来支持日常的公众活动。另一方面,政府也可以利用这一预测来确定抑制气候变化的法规。本研究使用长短期记忆(LSTM)和Prophet两种机器学习模型开发了雅加达的气温预测模型。LSTM是经典循环神经网络(RNN)的一种变体,增加了存储长期信息的记忆块。“先知”是Facebook开发的一个加法回归模型。选择这些模型来处理随机数据,如气温。在这里,我们基于时序历史数据来预测气温的时间序列。利用RMSE和相关系数值来衡量预测的准确性。研究结果表明,LSTM对2 ~ 48小时的短期预报效果较好,RMSE值在0.31 ~ 0.69之间。另一方面,Prophet模型适用于更长期的预测,即72至168小时,RMSE在0.80至0.89之间。
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