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Embedded Dynamic Intelligent Algorithm in Computer Software Testing

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DOI: 10.23977/acss.2022.060407 | Downloads: 12 | Views: 649

Author(s)

Ying He 1, Yan Chen 1

Affiliation(s)

1 Sichuan Vocational and Technical College, Suining, Sichuan 629000, China

Corresponding Author

Ying He

ABSTRACT

Since entering the digital information age, ARM embedded systems equipped with high-performance embedded processors have obtained huge development opportunities and ushered in the most beautiful market prospects in history. The purpose of this article is to study the application of embedded dynamic intelligent algorithms in computer software testing. First, it analyzes the research background of the subject, expounds the purpose and significance of the research from different angles, and introduces the main content. Secondly, a dynamic matrix control algorithm is introduced into the predictive control algorithm. Modeling is convenient, internal mechanism analysis is simple, and model accuracy is low. Due to the contradiction between static and dynamic performance, the contradiction between tracking set value and suppressing disturbance, and the contradiction between robustness and control performance, it is designed as a PID-DMC control system. A detailed analysis and summary of the previous theoretical results of software testing, computer software testing based on the characteristics of the embedded software itself, the experimental results show that the cascade DMC-PID main steam temperature control system runs stably.

KEYWORDS

Embedded Dynamics, Intelligent Algorithms, Computer Software, Test Applications

CITE THIS PAPER

Ying He, Yan Chen, Embedded Dynamic Intelligent Algorithm in Computer Software Testing. Advances in Computer, Signals and Systems (2022) Vol. 6: 57-62. DOI: http://dx.doi.org/10.23977/acss.2022.060407.

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