遗传算法在飞行系统验证与验证中的应用

G. Sacco, K. Barltrop, Cin-Young Lee, G. Horvath, R. Terrile, Seungwon Lee
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引用次数: 4

摘要

如今,大多数复杂的系统都严重依赖软件,航天器和卫星系统也不例外。此外,随着系统能力的增加,集成和处理系统任务所需的相应软件变得更加复杂。因此,为了保证系统的成功,对软件进行测试变得势在必行。传统上,对所有可能的行为进行详尽的测试。然而,考虑到当前系统中交互行为的复杂性和数量的增加,进行这种彻底测试所需的时间是令人望而却步的。因此,许多人采用了随机测试技术,以便在合理的时间内实现对测试空间的充分覆盖。在本文中,我们提出使用遗传算法(GA)来大大减少执行的测试数量,同时仍然保持与当前随机测试方法相同的置信度水平。我们提出了一个专门为系统测试领域量身定制的遗传算法。为了验证我们的算法,我们使用了《Dawn》测试活动的结果。初步结果看起来非常鼓舞人心,表明我们的方法在搜索最差的测试用例时优于随机搜索,将搜索限制在整个搜索域的6%。
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Application of genetic algorithm for flight system verification and validation
Most complex systems nowadays heavily rely on software, and spacecraft and satellite systems are no exception. Moreover as systems capabilities increase, the corresponding software required to integrate and address system tasks becomes more complex. Hence, in order to guarantee a system's success, testing of the software becomes imperative. Traditionally exhaustive testing of all possible behaviors was conducted. However, given the increased complexity and number of interacting behaviors of current systems, the time required for such thorough testing is prohibitive. As a result many have adopted random testing techniques to achieve sufficient coverage of the test space within a reasonable amount of time. In this paper we propose the use of genetic algorithms (GA) to greatly reduce the number of tests performed, while still maintaining the same level of confidence as current random testing approaches. We present a GA specifically tailored for the systems testing domain. In order to validate our algorithm we used the results from the Dawn test campaign. Preliminary results seem very encouraging, showing that our approach, when searching the worst test cases, outperforms random search , limiting the search to a mere 6 % of the full search domain.
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