The design of Datascapes: toward a design framework for sonification for anomaly detection in AI-supported networked environments

IF 2.4 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Sara Lenzi, Ginevra Terenghi, Damiano Meacci, Aitor Moreno Fernandez-de-Leceta, Paolo Ciuccarelli
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引用次数: 0

Abstract

There is a growing need for solutions that can improve the communication between anomaly detection algorithms and human operators. In the context of real-time monitoring of networked systems, it is crucial that new solutions do not increase the burden on an already overloaded visual channel. Sonification can be leveraged as a peripheral monitoring tool that complements current visualization systems. We conceptualized, designed, and prototyped Datascapes, a framework project that explores the potential of sound-based applications for the monitoring of cyber-attacks on AI-supported networked environments. Within Datascapes, two Design Actions were realized that applied sonification on the monitoring and detection of anomalies in (1) water distribution networks and (2) Internet networks. Two series of prototypes were implemented and evaluated in a real-world environment with eight experts in network management and cybersecurity. This paper presents experimental results on the use of sonification to disclose anomalous behavior and assess both its gravity and the location within the network. Furthermore, we define and present a design methodology and evaluation protocol that, albeit grounded in sonification for anomaly detection, can support designers in the definition, development, and validation of real-world sonification applications.
数据图景的设计:为人工智能支持的网络环境中的异常检测建立声化设计框架
人们越来越需要能够改善异常检测算法与人类操作员之间交流的解决方案。在对网络系统进行实时监控的背景下,新的解决方案不能增加已经超负荷的可视化通道的负担,这一点至关重要。声学可作为一种外围监控工具,对当前的可视化系统进行补充。我们构思、设计并原型化了 Datascapes,这是一个探索基于声音的应用潜力的框架项目,用于监控人工智能支持的网络环境中的网络攻击。在 Datascapes 项目中,我们实现了两项设计行动,将声化技术应用于监测和检测 (1) 供水管网和 (2) 互联网网络中的异常情况。两个系列的原型已在现实环境中实施,并由八位网络管理和网络安全专家进行了评估。本文介绍了使用声波技术披露异常行为并评估其严重程度和在网络中的位置的实验结果。此外,我们还定义并介绍了一种设计方法和评估协议,尽管该方法和协议是基于异常检测的声化技术,但可以支持设计人员定义、开发和验证真实世界的声化应用。
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
Frontiers in Computer Science
Frontiers in Computer Science COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
4.30
自引率
0.00%
发文量
152
审稿时长
13 weeks
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