基于群智感知的石化企业噪声地图平台设计与实现
Safety Health & Environment(2021)
中石化安全工程研究院有限公司
Abstract
结合"工业互联网+安全生产"行动部署,探索构建了基于群智感知的石化企业噪声地图平台,从需求分析、建设目标、架构设计、功能特性、管理应用等多维度展开分析,相对于传统噪声地图,基于群智感知的石化企业噪声地图平台在噪声监控成本可控性、监测覆盖全面性、监测时效性等方面存在诸多优点,可以为预防生产性噪声危害、积极推进健康企业示范建设提供借鉴、参考.
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