避免饮用水分析中的操作取样错误

Ana Fernandes, Margarida Figueiredo, Jorge Ribeiro, J. Neves, H. Vicente
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引用次数: 0

摘要

作为根据ISO/IEC 17025:2017进行的质量认证的一部分,2019年上半年在水实验室进行的内部审计显示,与采样有关的不良事件频率很高。这些故障可能是多种原因的结果,在某些情况下,有关它们的信息可能不足或不清楚。考虑到采样对水实验室提供的分析结果的质量有重大影响,这项工作提出了一个报告和学习不良事件的系统。其目的是记录不符合、错误和不良事件,使自动数据分析成为可能,以确保操作抽样的持续改进。该系统基于埃因霍温分类模型(Eindhoven Classification Model),可自动进行数据分析和报告,以识别故障的主要原因。逻辑编程用于表示知识和支持推理机制,以便在信息不完整、矛盾甚至未知的情况下对话语世界进行建模。除了提出问题的解决方案外,该系统还为所提出的解决方案提供正式证据,这将有助于持续改善饮用水质量,促进公众健康。
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Avoidance of operational sampling errors in drinking water analysis
The internal audits carried out in the first half of 2019 in water laboratories as part of quality accreditation in accordance with ISO/IEC 17025:2017 showed a high frequency of adverse events in connection with sampling. These faults can be a consequence of a wide range of causes, and in some cases, the information about them can be insufficient or unclear. Considering that sampling has a major influence on the quality of the analytical results provided by water laboratories, this work presents a system for reporting and learning adverse events. Its aim is to record nonconformities, errors, and adverse events, making possible automatic data analysis aiming to ensure continuous improvement in operational sampling. The system is based on the Eindhoven Classification Model and enables automatic data analysis and reporting to identify the main causes of failure. Logic programming is used to represent knowledge and support the reasoning mechanisms to model the universe of discourse in scenarios of incomplete, contradicting, or even unknown information. In addition to suggesting solutions to the problem, the system provides formal evidence of the solutions presented, which will help to continuously improve drinking water quality and promote public health.
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