COVID-19 cases prediction with negative group delays digital function

Blaise Ravelo, Mathieu Guerin, Habachi Bilal, Sylcolin Rakotonandrasana, Wenceslas Rahajandraibe
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Abstract

The negative group delay (NGD) is an uncommon function enabling to propagate arbitrary waveform signals with time-advance behavior. The counterintuitive NGD function was initially experimented for anticipating typically fast and short duration electronic signals in micro- and milli-second time scale. The application of NGD function to large time scale signal attracts more and more the attention of data processing engineer. This paper aims to investigate on the ability of NGD function to predict time- dependent social data with someday time-advances. As practical case of study, an innovative application of NGD function for predicting disease cases is treated. The digital circuit theory enabling to understand the low-pass (LP) NGD canonical TF and the characterization approach is established. It is shown in which condition the first order difference equation represents a LP-NGD circuit. Then, the design method of typical LP-NGD predictor as numerical circuit is introduced in function of the expected time-advance. The NGD predictor time-variation property is theoretically initiated. The NGD time-advance varied from -7 days to -1/2 days is investigated with deterministic data prediction processing from 5-months bi- exponential waveform data. The predicted data with time-advance of about -4 days was confirmed by analytical computation and simulation. The LP-NGD digital predictor feasibility is validated with monthly COVID-19 randomly arbitrary data by computed and virtually tested results. It was investigated with sensitivity analysis that the prediction performance is better when the input signal is smoothed enough. As expected, prediction result showing very good correlation with input data is demonstrated.
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用负组延迟数字功能预测新冠肺炎病例
负群延迟(NGD)是一种不常见的函数,可以传播任意波形信号。反直觉的NGD函数最初被用于在微毫秒和毫秒的时间尺度上预测通常快速和短时间的电子信号。NGD函数在大时间尺度信号中的应用越来越受到数据处理工程师的关注。本文旨在探讨NGD函数对时变社会数据的预测能力。作为实际研究案例,探讨了NGD函数在疾病病例预测中的创新应用。建立了能够理解低通(LP) NGD规范TF的数字电路理论和表征方法。在这种情况下,一阶差分方程表示一个LP-NGD电路。然后,介绍了典型的LP-NGD预测器作为数字电路的设计方法,以期望时间提前为函数。从理论上提出了NGD预测器的时变特性。利用5个月双指数波形资料进行确定性预测处理,研究了NGD时间提前-7 ~ -1/2天的变化规律。通过解析计算和模拟验证了预测数据,预测时间提前约为-4天。通过每月COVID-19随机数据的计算和虚拟测试结果验证了LP-NGD数字预测器的可行性。通过灵敏度分析研究,当输入信号足够平滑时,预测效果较好。正如预期的那样,预测结果与输入数据具有很好的相关性。
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