Improving fault localization for Simulink models using search-based testing and prediction models

Bing Liu, Lucia, S. Nejati, L. Briand
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引用次数: 42

Abstract

One promising way to improve the accuracy of fault localization based on statistical debugging is to increase diversity among test cases in the underlying test suite. In many practical situations, adding test cases is not a cost-free option because test oracles are developed manually or running test cases is expensive. Hence, we require to have test suites that are both diverse and small to improve debugging. In this paper, we focus on improving fault localization of Simulink models by generating test cases. We identify three test objectives that aim to increase test suite diversity. We use these objectives in a search-based algorithm to generate diversified but small test suites. To further minimize test suite sizes, we develop a prediction model to stop test generation when adding test cases is unlikely to improve fault localization. We evaluate our approach using three industrial subjects. Our results show (1) the three selected test objectives are able to significantly improve the accuracy of fault localization for small test suite sizes, and (2) our prediction model is able to maintain almost the same fault localization accuracy while reducing the average number of newly generated test cases by more than half.
使用基于搜索的测试和预测模型改进Simulink模型的故障定位
提高基于统计调试的故障定位准确性的一种有希望的方法是增加底层测试套件中测试用例的多样性。在许多实际情况下,添加测试用例并不是一个没有成本的选择,因为测试oracle是手动开发的,或者运行测试用例是昂贵的。因此,我们需要多样化和小型化的测试套件来改进调试。本文主要通过生成测试用例来改进Simulink模型的故障定位。我们确定了三个旨在增加测试套件多样性的测试目标。我们在基于搜索的算法中使用这些目标来生成多样化但较小的测试套件。为了进一步最小化测试套件的大小,我们开发了一个预测模型,在添加测试用例不太可能改善故障定位时停止测试生成。我们用三个工业主题来评估我们的方法。我们的结果表明:(1)所选择的三个测试目标能够显著提高小测试套件的故障定位精度;(2)我们的预测模型能够保持几乎相同的故障定位精度,同时将新生成的测试用例的平均数量减少一半以上。
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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