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PSDE 시스템의 효율적인 내부 구조 : PSDE:PELIHAN Syntax-Directed Editor
유태웅,박용성 群山大學校 1994 論文集 Vol.21 No.-
We are currently developing a version of the PSDE for PELIHAN (Programming Educational Language In HANgul). The PSDE system is an interactive programming environment with integrated facilities to create, edit, execute, and debug programs. Both editing and execution are guided by the syntactic structure of the programming language. The grammar of the programming language is embodied in a collection of templates predefined for all but the simplest statement types. This editor provides the language-based interaction environment that an user can simply programming. This paper presents an efficient internal organization in PSDE system that is one of the syntax-directed editor. Moreover, this system produces intermediate code for fast execution.
金貳南,朴鏞成 群山大學校 1986 論文集 Vol.12 No.-
本 論文에서는 M/G/I Queue에 對한 몇 가지 것들을 알아본다. 먼저 Arriving 'Customer's Districution, Departing Customer's Distribution, Outside Observer's Distribution과 이들 사이의 關係를 알아본다. 그 다음 Little 의 定理를 證明하고 이것들 이외에 M/G/I Queue를 分析하는 데 必要한 것들을 몇 가지 더 알아 본 다음 M/G/I Queue의 mean Queue Length와 Mean Waiting Time 을 구해 본다. Inbedded Markov Chain을 證明하고 이를 利用하여 M/G/I Queue Length 에 對한 Probability Generating Function과 Waiting Time 에 對한 Moment Generating Function을 誘導한다. This study is intended to investigate a few things about M/G/I queue. First of all, the researcher intends to know the relationship among Arriving Customer's Distribution, Departing Customer's Distribution, and Outside Observer's Distribution. Then the researcher tries to prove a theorem of Little and to find out a few more things needed to analyze the M/G/I queue additionally. Moreover the researcher intends to find out the mean queue length and the men waiting time of M/G/I queue. Rastly the researcher tries to induce the moment generating function about waiting time and the probability generating function about M/G/I queue length, by explaining and using the Imbedded Markov Chain.