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CNN based Variation and Prediction Analysis of 2m Air Temperature for Different Zones of the Indian Region

机译:基于CNN基于CNN的印度区域不同区域2M气温的变化及预测分析

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Time series forecasting is a method that predicts future values by analyzing past values. Temperature alarms are valuable predictions because they are used to safeguard life and property and to increase operational performance. Here 2m air temperature refers to the temperature of air recorded at 2 meters from the ground. Paper consists of time-series prediction of temperature data that has been taken from automatic weather stations(AWS) installed by the Indian Space Research Organisation. Given paper presents the applicability of different machine learning(ML) algorithms like convolutional neural network(CNN), long short term memory(LSTM), and autoregressive integrated moving average(ARIMA) algorithms for the validity of temperature prediction over four different stations which are Ahmedabad, Balasore, Coimbatore, and Udaipur. These stations record the hourly-based temperatures. Based on different datasets, the prediction accuracy of algorithms is compared. The paper discusses the results showing that by applying different algorithms to the different datasets with different characteristics, it is observed that the various algorithms behave distinctly with numerous 1-dimensional datasets based on the variation in recorded values, location, or type of the input data i.e hourly input data or daily input data. This analysis shows that different machine learning algorithms have a different performance ratio while applied to various data sets.
机译:时间序列预测是通过分析过去的值来预测未来值的方法。温度警报是有价值的预测,因为它们用于保护寿命和财产并提高运营性能。这里2M气温是指距离地面2米处的空气温度。纸张由印度空间研究组织安装的自动气象站(AWS)采用的温度数据的时间序列预测组成。鉴于纸张介绍了不同机器学习(ML)算法(如卷积神经网络(CNN),长短短期内存(LSTM)和自回归集成移动平均(ARIMA)算法的适用性,用于对四个不同站的温度预测有效性Ahmedab​​ad,Balasore,Coimbatore和Udaipur。这些站记录了基于每小时的温度。基于不同的数据集,比较了算法的预测精度。本文讨论了结果表明,通过用不同特征将不同的算法应用于不同的数据集,观察到各种算法基于所记录的值,位置或类型的类型的变化,与许多1维数据集明显地行事即每小时输入数据或每日输入数据。该分析表明,不同的机器学习算法具有不同的性能比,同时应用于各种数据集。

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