Tatano Lab, Department of Social Informatics, Graduate School of Informatics, Kyoto University, Kyoto, Japan.
Disaster Prevention Research Institute, Kyoto University, Kyoto, Japan.
Front Public Health. 2024 Feb 29;12:1308301. doi: 10.3389/fpubh.2024.1308301. eCollection 2024.
Economic loss estimation is critical for policymakers to craft policies that balance economic and health concerns during pandemic emergencies. However, this task is time-consuming and resource-intensive, posing challenges during emergencies.
To address this, we proposed using electricity consumption (EC) and nighttime lights (NTL) datasets to estimate the total, commercial, and industrial economic losses from COVID-19 lockdowns in the Philippines. Regression models were employed to establish the relationship of GDP with EC and NTL. Then, models using basic statistics and weather data were developed to estimate the counterfactual EC and NTL, from which counterfactual GDP was derived. The difference between the actual and the counterfactual GDP from 2020 to 2021 yielded economic loss.
This paper highlights three findings. First, the regression model results established that models based on EC (adj- ≥ 0.978) were better at explaining GDP than models using NTL (adj- ≥ 0.663); however, combining both EC and NTL improved the prediction (adj- ≥ 0.979). Second, counterfactual EC and NTL could be estimated using models based on statistics and weather data explaining more than 81% of the pre-pandemic values. Last, the estimated total loss amounted to 2.9 trillion PhP in 2020 and 3.2 trillion PhP in 2021. More than two-thirds of the losses were in the commercial sector as it responded to both policies and the COVID-19 case surge. In contrast, the industrial sector was affected primarily by the lockdown implementation.
This method allowed monitoring of economic losses resulting from long-term and large-scale hazards such as the COVID-19 pandemic. These findings can serve as empirical evidence for advocating targeted strategies that balance public health and the economy during pandemic scenarios.
在大流行病紧急情况下,政策制定者需要进行经济损失评估,以制定兼顾经济和健康的政策。然而,这项任务既耗时又耗费资源,在紧急情况下面临挑战。
为了解决这个问题,我们提出使用电力消耗(EC)和夜间灯光(NTL)数据集来估计菲律宾 COVID-19 封锁造成的总经济损失、商业经济损失和工业经济损失。我们采用回归模型建立 GDP 与 EC 和 NTL 的关系。然后,我们开发了使用基本统计数据和天气数据的模型来估计 EC 和 NTL 的实际值,从而推导出实际 GDP。2020 年至 2021 年实际 GDP 与实际 GDP 的差异产生了经济损失。
本文强调了三个发现。首先,回归模型的结果表明,基于 EC 的模型(调整后 R2≥0.978)比基于 NTL 的模型(调整后 R2≥0.663)更能解释 GDP;然而,结合 EC 和 NTL 可以提高预测精度(调整后 R2≥0.979)。其次,基于统计和天气数据的模型可以估计出实际值的 81%以上的反事实 EC 和 NTL。最后,估计 2020 年总损失为 2.9 万亿菲律宾比索,2021 年为 3.2 万亿菲律宾比索。损失的三分之二以上来自商业部门,因为它既对政策又对 COVID-19 病例激增做出了反应。相比之下,工业部门主要受到封锁措施的影响。
该方法允许监测 COVID-19 等长期和大规模灾害造成的经济损失。这些发现可以为在大流行情况下倡导平衡公共卫生和经济的有针对性战略提供经验证据。