火星天气数据分析的机器学习技术

P. Pant, A. Rajawat, S. B. Goyal, Baharu Bin Kemat, Traian Candin Mihaltan, Chaman Verma, M. Răboacă
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引用次数: 0

摘要

对火星的探索提供了大量的天气数据,这对分析和预测提出了独特的挑战。为了应对这些挑战,本研究论文侧重于机器学习技术在火星天气数据分析中的应用。其目标是开发能够有效提取模式、揭示隐藏关系的模型,并对火星天气系统进行准确预测。这项研究从对现有火星天气数据的全面回顾开始。该数据集由历史记录组成,是训练和评估机器学习模型的基础。对火星天气数据集的分析显示,火星的气候冰冷而恶劣,平均最高温度约为-21°C,平均最低温度为-80°C。温度变化表明,在火星从1990年到2000年的过程中,最低温度在20-30°C的较窄范围内波动,而最高温度的变化幅度较大,约为40-50°C。在此期间,火星上的大气压在720pa到950pa之间波动。此外,使用肘形法发现,3个簇是识别天气数据中不同模式的理想数量。线性回归模型也达到了85%的准确率,证明了它在预测火星天气模式方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Techniques for Analysis of Mars Weather Data
The exploration of Mars has provided vast amounts of weather data that present unique challenges for analysis and prediction. To address these challenges, this research paper focuses on the application of machine learning techniques for the analysis of Mars weather data. The objective is to develop models that can effectively extract patterns, uncover hidden relationships, and enable accurate predictions in the Martian weather system. The research begins with a comprehensive review of the available Mars weather data. The dataset, consisting of historical records, serves as the foundation for training and evaluating machine learning models. The analysis of the Mars weather dataset reveals the planet's icy and harsh climate, with average maximum temperatures of around -21°C and average minimum temperatures of -80°C. The temperature variations show that the minimum temperature fluctuates within a narrower range of 20-30°C over the course of Mars sols from 0 to 2000, while the maximum temperature experiences larger variations of about 40-50°C. During this time, the atmospheric pressure on Mars fluctuates between 720 Pa and 950 Pa. In addition, using the elbow method revealed that 3 clusters were the ideal number for identifying distinct patterns in the weather data. The linear regression model also attained an accuracy of 85%, demonstrating its efficacy in forecasting weather patterns on Mars.
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