软件可靠性工程中最新的方法和概念问题

Florin Popentiu Vladicescu, G. Albeanu, H. Madsen
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引用次数: 0

摘要

现场大量的传感器和基于物联网的设备的使用产生了大量的数据,其中一些数据对于解决维护策略、更换要求、校准、研究新的数据分析模型等非常有用。由于应用于信息处理的新技术,工业和社会系统的复杂性都在增加。嵌入和集成方面的最新发展为收集、过滤、分析和解释由大量传感器、特殊设备或人员产生的大量数据提供了新的机会,这些数据被称为“大数据”。这项工作强调与数据登记、过滤、平滑和分析有关的概念问题和方法方面,以便预测生活质量的重要指标。考虑到数据来源和可靠性数据使用的新方法,重新审视了系统可靠性工程领域。还讨论了智能城市应用程序的软件可靠性。考虑以下框架:系统的系统(SoS)、大数据、系统运行/环境(SOE)数据和智慧城市可靠性。SoS的可靠性工程取决于其本质:基于资源共享的虚拟系统,基于协议的协作系统,基于通过定义良好的接口进行协作管理的确认系统,以及基于集中管理的定向SoS。根据具体的体系结构和特定的可靠性要求,SoS的可靠性估计会有所不同。当在大数据环境中考虑可靠性时,考虑两种技术:批处理(基于对“静态数据”的分析)或流处理(基于对“动态数据”的分析)。考虑到“维度的诅咒”,现有可靠性模型对大数据可靠性问题的充分性将在最后一节中考虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RECENT METHODOLOGICAL AND CONCEPTUAL ISSUES IN SOFTWARE RELIABILITY ENGINEERING
The large number of sensors in the field, and the usage of IoT based equipment generate big collections of data, some of them being useful to address maintenance policies, replacement requirements, calibration, research on new data analysis models etc. Both industrial and social systems are increasing in complexity due to new technologies applied to information processing. Recent developments in embedding and integration offered new opportunities to collect, filter, analyse, and interpret huge collections of data generated by large populations of sensor, special devices, or people, and named "Big Data". This work emphasizes on conceptual issues and methodological aspects related to data registration, filtering, smoothing, analysing in order to predict important indicators of the quality of life. The systems reliability engineering field is revisited taking into account both data sources and the new methodologies used for reliability data. Software reliability of applications for smart cities is also addressed. The following frameworks are considered: Systems of Systems (SoS), Big Data, System Operating/Environmental (SOE) data, and Smart cities reliability. The SoS reliability engineering depends on its nature: virtual - based on resource sharing, collaborative - based on agreements, acknowledged - based on collaborative management through a well defined interface, and directed SoS - based on centralized management. The SoS reliability is estimated differently depending on the specific architecture and particular reliability requirements. When the reliability is considered in context Big data, both technologies are considered: batch processing (based on analytics on "data at rest") or stream processing (analytics on "data in motion"). The adequacy of existing reliability models to the Big data reliability concerns, taking into account the 'curse of dimensionality" is considered in the last section.
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