Loshini Thiruchelvam, S. Dass, Nirbhay Mathur, V. Asirvadam, B. Gill
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引用次数: 1
Abstract
This study aimed to build best dengue cases prediction model for Petaling district, in Selangor. Linear Least Square estimation method is used to build the models and Mean Square Error (MSE) and Akaike Information Criterion (AIC) value is used as tool of comparison between models. Prior to model development, the respective variables are first normalized, using 0–1 normalization procedure. Next, significant predictors are identified from weather variables namely mean temperature, relative humidity, and rainfall. Thirdly, feedback data was included and identified if could yield better prediction models. Few model orders of lag time are built simultaneously, and the most accurate prediction model was selected for Petaling district. Study found dengue prediction models including all three climate variables of mean temperature, relative humidity, cumulative rainfall and together with previous dengue cases to have the lowest MSE and AIC values. This is aligned with previous studies which selected model with climate and previous dengue cases models as best model fit. Thus, study proposed future studies to incorporate all three climate variables and previous dengue cases while developing dengue prediction models.
本研究旨在建立雪兰莪州Petaling地区登革热病例的最佳预测模型。采用线性最小二乘估计方法建立模型,采用均方误差(MSE)和赤池信息准则(Akaike Information Criterion, AIC)值作为模型间的比较工具。在模型开发之前,首先使用0-1规范化过程对各个变量进行规范化。接下来,从天气变量即平均温度、相对湿度和降雨量中确定重要的预测因子。第三,纳入反馈数据,并确定是否可以产生更好的预测模型。同时建立了几个滞后时间的模型阶数,选取了最准确的花瓣陵区预测模型。研究发现,登革热预测模型包括平均温度、相对湿度、累积降雨量这三个气候变量,并结合以往登革热病例,其MSE和AIC值最低。这与以前的研究一致,这些研究选择了气候模型和以前的登革热病例模型作为最佳模型拟合。因此,研究人员建议未来的研究在开发登革热预测模型时纳入所有三个气候变量和以前的登革热病例。