利用机器学习改善病媒控制、公共卫生并减少城市水资源管理的分散性

Hygiene Pub Date : 2024-01-11 DOI:10.3390/hygiene4010004
Fernanda Klafke, Elisa Henning, Virginia Grace Barros
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引用次数: 0

摘要

城市水域(UW)是一种复杂的环境,其定义与城市区域的水系统有关,无论是自然系统还是城市设施。这些环境的健康关系到公众健康和生活质量,因为公众健康是环境和人类影响的焦点。基础设施对于维护公众健康和社会经济发展卫生至关重要。基础设施不足会滋生病媒。在巴西,尽管政府努力管理现有系统,但人口和环境仍受到城市供水基础设施不足的影响。在这项工作中,机器学习(回归树)通过使用埃及伊蚊侵扰指数(HI)和供水、废水、雨水和排水指标(SNIS 数据),证明了卫生设施的不足和水务管理的分散对公共卫生的影响。结果显示,巴西各地区面临的问题各不相同。虫害较严重的地区是东北部、北部和东南部。此外,SNIS 数据较好的城市虫害发生率较低。在发展中国家,通过水和城市地区的综合管理最大限度地减少与环境卫生相关的问题极为重要。统一用水管理与公共卫生息息相关。水资源管理分散会导致更复杂的问题,管理者必须正视这些问题,以提高城市地区的生活质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Machine Learning to Improve Vector Control, Public Health and Reduce Fragmentation of Urban Water Management
Urban waters (UW) are complex environments, and their definition is related to water systems in urban zones, whether in a natural system or an urban facility. The health of these environments is related to public health and the quality of life because public health is the focal point of environmental and anthropic impacts. Infrastructure is paramount for maintaining public health and social and economic development sanitation. Insufficient infrastructure favors disease vectors. The population and environment suffer from deficient urban water infrastructure in Brazil despite government efforts to manage the existing systems. In this work, machine learning (regression trees) demonstrates the deficiency of sanitation and UW management fragmentation on public health by using the Aedes aegypti infestation index (HI) and water supply, wastewater, stormwater and drainage indicators (SNIS data). The results show that each Brazilian region faces different problems. The more infested regions were Northeastern, Northern and Southeastern. Moreover, municipalities with better SNIS data have lower infestation rates. Minimizing problems related to sanitation through the integrated management of water and urban areas is extremely important in developing countries. UW governance is connected to public health. Water management fragmentation leads to more complex issues, and managers must confront them to improve the quality of life in urban zones.
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