Using machine learning and blockchain for trusted detection and monitoring of excessive working hours in factories

IF 12.5 1区 社会学 Q1 SOCIAL ISSUES
Diana Hawashin , Khaled Salah , Raja Jayaraman , Ibrar Yaqoob
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引用次数: 0

Abstract

The Organisation for Economic Co-operation and Development (OECD) Due Diligence Guidance emphasizes the importance of managing working hours to protect the rights of workers. Excessive hours pose serious health risks, which highlights the need for robust detection and reporting systems. However, many of today’s systems, methods, and technologies used for managing labor hours lack traceability, auditability, accountability, and trust. Additionally, they are centralized and manual or paper-based, which makes them vulnerable to manipulation as they are controlled by a limited number of entities. In this paper, we present a machine learning and blockchain-based solution to automate the detection of excessive working hours in a manner that is decentralized, as part of an antitrust coalition, with regulated transparency, traceability, auditability, and trustworthiness. We develop smart contracts to automate compliance reporting and manage large datasets off-chain through decentralized storage. The proposed system achieves a detection accuracy of 96.6% and a precision of 92%. We conduct a comprehensive evaluation of the proposed solution, including cost analysis, security assessment, and performance evaluation of the worker detection component. By comparing our solution to existing safety monitoring systems, we demonstrate its superior automation, traceability, and trustworthiness. The proposed solution not only enhances worker safety and compliance with OECD guidelines but also contributes to sustainability in industrial environments.
利用机器学习和区块链对工厂的超长工作时间进行可靠的检测和监控
经济合作与发展组织(OECD)《尽职调查指南》强调了管理工作时间以保护工人权利的重要性。工作时间过长会造成严重的健康风险,因此需要强有力的检测和报告系统。然而,今天许多用于管理劳动时间的系统、方法和技术缺乏可追溯性、可审核性、责任和信任。此外,它们是集中的、手动的或基于纸张的,这使得它们容易受到操纵,因为它们由有限数量的实体控制。在本文中,我们提出了一种基于机器学习和区块链的解决方案,以一种分散的方式自动检测过度工作时间,作为反垄断联盟的一部分,具有受监管的透明度、可追溯性、可审计性和可信度。我们开发智能合约,通过分散存储自动化合规报告和管理大型数据集。该系统的检测准确率为96.6%,精密度为92%。我们对提议的解决方案进行全面的评估,包括成本分析、安全评估和工人检测组件的性能评估。通过将我们的解决方案与现有的安全监控系统进行比较,我们展示了其卓越的自动化、可追溯性和可靠性。拟议的解决方案不仅提高了工人的安全和遵守经合组织的指导方针,而且有助于工业环境的可持续性。
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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来源期刊
CiteScore
17.90
自引率
14.10%
发文量
316
审稿时长
60 days
期刊介绍: Technology in Society is a global journal dedicated to fostering discourse at the crossroads of technological change and the social, economic, business, and philosophical transformation of our world. The journal aims to provide scholarly contributions that empower decision-makers to thoughtfully and intentionally navigate the decisions shaping this dynamic landscape. A common thread across these fields is the role of technology in society, influencing economic, political, and cultural dynamics. Scholarly work in Technology in Society delves into the social forces shaping technological decisions and the societal choices regarding technology use. This encompasses scholarly and theoretical approaches (history and philosophy of science and technology, technology forecasting, economic growth, and policy, ethics), applied approaches (business innovation, technology management, legal and engineering), and developmental perspectives (technology transfer, technology assessment, and economic development). Detailed information about the journal's aims and scope on specific topics can be found in Technology in Society Briefings, accessible via our Special Issues and Article Collections.
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