The Innovation Development of Data Prediction and Clustered Compressive Sensing (CCS) in Environmental Application

Sonia Kukreja, Garima Jain
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Abstract

Data prediction in environmental applications is a quickly evolving field that provides tremendous potential for improving environmental management and decision-making. By leveraging the power of data, predictive models can be developed to identify potential environmental risks, mitigate the impacts of climate change, and improve the efficiency of environmental management. Data prediction in environmental applications can be used to better understand the relationships between environmental phenomena and the environment. For instance, predictive models can be used to identify areas that are more likely to experience extreme weather events and inform the development of strategies for responding to such events. Predictive models can also be used to analyze the effects of changing climate on ecosystems and help inform decisions regarding the management of natural resources. Data prediction in environmental applications can also be used to develop more effective management strategies. Predictive models can be used to determine which areas are more likely to experience water scarcity or air pollution, and which areas are more likely to benefit from certain conservation practices. By leveraging data, predictive models can also help predict how certain management practices will affect the environment and inform decision-makers on how to best allocate resources.
数据预测与聚类压缩感知(CCS)在环境应用中的创新发展
环境应用中的数据预测是一个迅速发展的领域,为改善环境管理和决策提供了巨大的潜力。通过利用数据的力量,可以开发预测模型来识别潜在的环境风险,减轻气候变化的影响,并提高环境管理的效率。环境应用中的数据预测可以更好地理解环境现象与环境之间的关系。例如,预测模型可用于确定更有可能经历极端天气事件的地区,并为制定应对此类事件的策略提供信息。预测模型还可用于分析气候变化对生态系统的影响,并有助于为有关自然资源管理的决策提供信息。环境应用中的数据预测也可用于制定更有效的管理战略。预测模型可以用来确定哪些地区更有可能经历水资源短缺或空气污染,哪些地区更有可能从某些保护措施中受益。通过利用数据,预测模型还可以帮助预测某些管理实践将如何影响环境,并告知决策者如何最佳地分配资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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