A Small-Scale Temperature Forecasting System using Time Series Models Applied in Ho Chi Minh City

Quoc-Nam Nguyen, Chau-Thang Phan, Van-Nguyen Dinh, Bao-Khanh P. Truong, Thuy-Hong T. Dang, Trong-Hop Do
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引用次数: 0

Abstract

Urban living benefits greatly from weather forecasting since it may lower weather-related losses, safeguard public health and safety and promote both economic growth also quality of life. The main goal of this work is to develop a small-scale temperature forecasting system employing a cutting-edge time series model. In order to do so, data on Ho Chi Minh City's temperature is gathered. The performance of several time series models based on machine learning and deep learning is then evaluated for input data of various lengths. To create a small-scale temperature forecasting system, the best model is chosen. The suggested approach is particularly well suited for a smart agricultural indoor temperature forecasting system, which cannot be accomplished with any large-scale temperature forecasting systems.
时间序列模型在胡志明市的小尺度温度预报系统应用
城市生活极大地受益于天气预报,因为它可以减少与天气有关的损失,保障公众健康和安全,促进经济增长和生活质量。本工作的主要目标是开发一个采用前沿时间序列模型的小尺度温度预报系统。为此,收集了胡志明市的温度数据。然后对不同长度的输入数据评估基于机器学习和深度学习的几个时间序列模型的性能。为了建立一个小规模的温度预报系统,选择了最佳模型。建议的方法特别适合智能农业室内温度预报系统,这是任何大规模温度预报系统都无法完成的。
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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