KR20030040236A - The integrated energy education & training system using artificial intelligence method - Google Patents

The integrated energy education & training system using artificial intelligence method Download PDF

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KR20030040236A
KR20030040236A KR1020030009236A KR20030009236A KR20030040236A KR 20030040236 A KR20030040236 A KR 20030040236A KR 1020030009236 A KR1020030009236 A KR 1020030009236A KR 20030009236 A KR20030009236 A KR 20030009236A KR 20030040236 A KR20030040236 A KR 20030040236A
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training system
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artificial intelligence
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장승용
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(주)카프나
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Abstract

PURPOSE: A unified energy education training system by using an artificial intelligent technique is provided, which enable field engineers who are lack in expert knowledge to easy get expert knowledge. CONSTITUTION: A unified energy education training system by using an artificial intelligent technique includes an expert system(10) provided with an interactive user interface(11), a deduction engine(12) and a knowledge base(13) and an energy education training system(20) provided with a module selector(14) and a unified module(21), wherein the expert system(10) is capable of selecting the education process by using data inputted through the conversation with the user and the unified energy education training system which is capable of selecting the energy related education module desired by the user by receiving the input data of the expert system(10).

Description

인공지능기법을 이용한 통합 에너지 교육훈련 시스템 {The integrated energy education & training system using artificial intelligence method}Integrated energy education & training system using artificial intelligence method

현장 조업자들은 자신이 필요로 하는 지식 수준을 스스로 판단하기 어렵고 또한 자신들이 현장 조업을 효율적으로 하기 위하여 어떤 지식이 필요한지 알기 어려운 경우가 많다.It is often difficult for field operators to determine for themselves what level of knowledge they need, and also to know what knowledge they need in order to perform field operations efficiently.

본 발명은 에너지 생산, 수송, 저장 분야에 사용되는 전문지식들을 전문가시스템을 이용하여 현장 조업자들이 스스로 학습 및 훈련할 수 있도록 하는데 목적이 있다.An object of the present invention is to enable field operators to learn and train on their own using expert systems for expertise used in energy production, transportation, and storage.

에너지 생산, 수송, 저장 분야의 일부 교육 훈련 프로그램들이 사용되고 있으나 기존의 프로그램은 사용자 스스로가 알고자 하는 분야를 선택하여 교육을 받아야 한다. 그러나 이러한 전문 분야 선택은 상당한 전문 지식을 필요로 한다.Some education and training programs in the field of energy production, transportation, and storage are used, but the existing programs must be educated by selecting the fields that users want to know. However, this specialization choice requires considerable expertise.

이러한 어려움을 극복하기 위하여 전문지식이 거의 없는 사용자가 필요한 교육분야를 시스템이 사용자와의 평이한 대화 방식을 통하여 선택해주는 전문가시스템을 이용한 통합 에너지 교육훈련 시스템을 개발하고자 한다.In order to overcome these difficulties, the system aims to develop an integrated energy education and training system using an expert system that allows the system to select an educational field that requires little user expertise through a plain dialogue with the user.

따라서 본 발명은 인공지능 기법인 전문가시스템을 이용하여 사용자와의 평이한 질문을 통하여 사용자에게 필요한 교육 분야에 해당하는 모듈을 선택해 주는 통합에너지 교육 훈련 시스템을 구성함으로써 적재적소에 필요한 교육을 받고자 하는 현장 조업자들의 교육과 훈련을 할 수 있도록 하고자 한다. 전문가시스템을 이용하여 사용자에게 평이한 질문을 하면 사용자의 답변을 통하여 지식베이스 내에 있는 규칙(rule)과 사실(fact)를 추론엔진에서 분석하여 사용자가 받고자 하는 교육 모듈을 선택하도록 함으로써 다양한 에너지 분야의 전문 지식을 스스로 학습 및 진단할 수 있도록 하는 것이 목적이다.Therefore, the present invention uses the expert system, which is an artificial intelligence technique, to construct the integrated energy education and training system that selects the module corresponding to the education field required by the user through a simple question with the user. We want to make education and training of contractors possible. When the user asks a plain question using the expert system, the inference engine analyzes the rules and facts in the knowledge base through the user's answers and selects the education module that the user wants to receive. The goal is to enable knowledge to be learned and diagnosed on its own.

제1도는 발명의 전체 시스템 구성도이다.1 is an overall system configuration of the invention.

제2도는 본 발명에 의한 인공지능기법을 이용한 통합 에너지 교육 훈련 시스템의 수행 흐름도이다.2 is a flowchart illustrating an integrated energy education and training system using artificial intelligence according to the present invention.

본 발명의 장점, 특징, 바람직한 실례는 첨부한 도면을 참조하여 상세히 설명한다.Advantages, features, and preferred examples of the present invention will be described in detail with reference to the accompanying drawings.

도 1은 발명의 전체 시스템 구성도이다.1 is an overall system configuration diagram of the invention.

본 발명의 전체 시스템은 전문가시스템(10)과 에너지 교육훈련 시스템(20)으로 구성된다.The entire system of the present invention is composed of an expert system 10 and an energy education and training system 20.

전문가시스템(10)은 문답형 사용자인터페이스(11)와 추론엔진(12)과 지식베이스(13)로 구성된다. 에너지 교육훈련 시스템(20)은 모듈 선택기(14)와 통합모듈(21)로 구성된다.The expert system 10 is composed of a question-and-answer user interface 11, an inference engine 12, and a knowledge base 13. The energy education and training system 20 is composed of a module selector 14 and an integrated module 21.

여기서 전문가시스템(10)내의 문답형사용자 인터페이스(11)는 사용자와의 평이한 문답을 통해 사용자가 교육하고자 하는 모듈선택을 결정하는데 필요한 정보를 얻어 추론엔진(12)으로 전달한다.Here, the question-and-answer user interface 11 in the expert system 10 obtains the information necessary for determining the module selection that the user wants to educate through the plain question with the user, and transmits the information to the inference engine 12.

전문가시스템(10)내의 추론엔진(12)은 지식베이스(13) 내의 규칙(rule)과 사실(fact)에 근거하여, 입력된 평이한 문답내용을 분석하여 적절한 규칙을 선택하고 에너지 교육훈련 시스템(20)내의 모듈선택에 필요한 데이터를 얻는다.The inference engine 12 in the expert system 10 selects an appropriate rule by analyzing the contents of the plain answers, based on the rules and facts in the knowledge base 13, and the energy education and training system 20 Obtain data for module selection in the module.

지식베이스(13)는 전문가의 자문에 의거 미리 작성된 정보를 규칙의 형태로서 저장하고 있다.The knowledge base 13 stores, in the form of a rule, information previously prepared in accordance with expert advice.

모듈 선택기(14)는 문답형 사용자 인터페이스를 통해 사용자와 주고 받은 질문과 답변을 추론엔진에서 처리한 결과를 통해 사용자가 원하는 교육과정을 선택한다.The module selector 14 selects the curriculum desired by the user through the result of processing the question and answer exchanged with the user through the question-and-answer user interface in the inference engine.

에너지 교육훈련 시스템(20)내의 각 모듈(21)은 모듈선택기(14)를 통하여 입력된 정보를 기준으로 하여 사용자가 요청한 교육과정을 수행하도록 한다.Each module 21 in the energy education and training system 20 performs a curriculum requested by a user based on information input through the module selector 14.

도 2는 본 발명에 의한 인공지능기법을 이용한 통합 에너지 교육 훈련 시스템의 수행 흐름도이다. 여기서 S는 스텝을 나타낸다.2 is a flowchart illustrating an integrated energy education and training system using artificial intelligence according to the present invention. Where S represents a step.

도시된 바와 같이, 사용자가 평이한 질문에 대답하는 문답형 데이터 입력 단계(S1)와 입력된 데이터를 추론엔진을 통하여 규칙을 선택(S2)하는 단계와 지식베이스내의 해당하는 사실과 규칙을 선택(S3)하는 단계와 추론엔진으로부터 입력된 정보를 이용하여 에너지 교육훈련 시스템내의 교육하고자 하는 모듈을 선택하는 단계(S4)와 모듈선택후 사용자에게 교육 및 훈련을 수행하는 단계(S5)로 이루어진다.As shown, the user enters a question-and-answer data input step S1 for answering a plain question, and selects a rule through an inference engine (S2) and selects a corresponding fact and rule in the knowledge base (S3). ) And selecting the module to be trained in the energy education and training system using the information input from the inference engine (S4) and performing the education and training to the user after the module selection (S5).

이와 같이 이루어지는 본 발명에 의한 인공지능기법을 이용한 통합 에너지 교육 훈련 시스템은 먼저 S1 단계에서 평이한 질문에 대답하는 문답방식에 의해서 사용자로부터 데이터를 입력 받고 S2 단계에서 입력된 데이터를 추론엔진을 통하여 추론에 의한 최적의 규칙을 선택한다.The integrated energy education and training system using the artificial intelligence technique according to the present invention is first inputted data from the user by the question and answer method that answers the plain questions in step S1 and the data input in the step S2 to the inference through the inference engine. Choose the best rule by

단계 S3에서 지식베이스내의 해당하는 사실과 규칙을 선택하고,In step S3, the corresponding facts and rules in the knowledge base are selected,

단계 S4에서 역시 사용자가 추론엔진으로부터 입력된 정보를 이용하여 사용자가 필요로 하는 에너지 교육훈련 시스템내의 모듈을 선택한다.In step S4, the user selects the module in the energy education and training system that the user needs by using the information input from the inference engine.

단계 S5에서 실제 선택된 교육 모듈을 통해 사용자의 교육 훈련이 수행된다.In step S5, the user's education and training is performed through the actually selected education module.

이상에서 상술한 본 발명 '인공지능기법을 이용한 통합 에너지 교육훈련 시스템' 에 따르면 전문지식이 부족한 현장 조업자들이 쉽게 전문지식을 습득할 수 있으며 궁극적으로 효율적이고 안전한 현장 조업을 가능하게 한다.According to the above-described 'integrated energy education and training system using artificial intelligence techniques' of the present invention, field operators lacking expertise can easily acquire expertise and ultimately enable efficient and safe field operation.

Claims (4)

인공지능기법을 이용한 통합 에너지 교육 훈련 시스템에 있어서, 사용자와의 대화를 통해 입력받은 데이터를 이용하여 교육과정을 선택할 수 있는 전문가 시스템과;An integrated energy education and training system using artificial intelligence, comprising: an expert system for selecting a curriculum using data input through dialogue with a user; 상기 전문가시스템의 입력데이터를 받아 사용자가 원하는 에너지 관련 교육 모듈을 선택하도록 구성된 것을 특징으로 하는 인공지능기법을 이용한 통합 에너지 교육훈련 시스템.Integrated energy education and training system using the artificial intelligence method, characterized in that configured to receive the input data of the expert system, the energy-related education module desired by the user. 제 1항에 있어서 상기 전문가시스템은, 사용자로부터 이해하기 쉬운 문답형의 질문을 통해 데이터를 입력 받아 추론엔진에 전달해 주고, 에너지 교육훈련 시스템내의 교육 모듈을 선택해 주는 문답형 사용자 인터페이스와;The system of claim 1, wherein the expert system comprises: a question-and-answer user interface that receives data through a question-and-answer question that is easy to understand from a user, delivers the data to an inference engine, and selects an education module in the energy education and training system; 상기 문답형 사용자 인터페이스를 통해 입력되는 문답내용을 지식베이스 안의 규칙과 사실을 이용하여 추론에 의한 최적의 규칙을 선택해 주는 추론엔진과;An inference engine that selects an optimal rule by inference using rules and facts in a knowledge base based on the content of questions and answers input through the question-and-answer user interface; 상기 추론엔진에게 전문가의 자문에 의거하여 작성된 정보를 전달해주는 지식베이스로 구성된 것을 특징으로 하는 인공지능기법을 이용한 통합 에너지 교육훈련시스템.Integrated energy education and training system using an artificial intelligence method, characterized in that consisting of a knowledge base that delivers the information created on the basis of expert advice to the inference engine. 제 1항에 있어서 상기 통합 에너지 교육훈련 시스템은, 문답형 사용자 인터페이스를 통해 사용자와 주고 받은 대화를 추론엔진에서 처리한 결과를 통해 사용자가 원하는 교육과정을 선택해 주는 모듈 선택기와;The system of claim 1, wherein the integrated energy education and training system comprises: a module selector for selecting a curriculum desired by a user through a result of processing a conversation with the user through a question-and-answer user interface in an inference engine; 추론엔진을 통하여 입력된 정보를 이용하여 교육훈련을 수행하는 에너지 교육훈련 모듈로 구성된 것을 특징으로 하는 인공지능기법을 이용한 통합 에너지 교육 훈련 시스템.Integrated energy education and training system using artificial intelligence techniques, characterized in that consisting of energy education and training module for performing education and training using the information input through the inference engine. 인공지능기법을 이용한 통합 에너지 교육 훈련 시스템에 있어서In the integrated energy education and training system using artificial intelligence 문답형데이터를 입력받는 단계와Receiving the question and answer data 상기 입력받은 데이터를 추론엔진을 통하여 규칙을 선택하는 단계와Selecting a rule through the inference engine based on the received data; 상기 선택된 규칙을 이용하여 지식베이스에서 에너지 교육 및 훈련에 필요한 정보를 추출하는 단계와Extracting information necessary for energy education and training from a knowledge base using the selected rule; 사용자가 원하는 교육 과정을 선택하는 모듈 선택 단계와Module selection steps to select the desired curriculum, 에너지 교육 및 훈련을 수행하는 단계들을 특징으로 하는 인공지능기법을 이용한 통합 에너지 교육 훈련 시스템.Integrated energy education and training system using artificial intelligence, characterized by the steps to perform energy education and training.
KR1020030009236A 2003-02-13 2003-02-13 The integrated energy education & training system using artificial intelligence method KR20030040236A (en)

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Cited By (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO2011122930A1 (en) * 2010-03-29 2011-10-06 Mimos Berhad Assessment system and method for innovative learning
CN109684466A (en) * 2019-01-04 2019-04-26 钛氧(上海)教育科技有限公司 A kind of intellectual education advisor system

Cited By (3)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO2011122930A1 (en) * 2010-03-29 2011-10-06 Mimos Berhad Assessment system and method for innovative learning
CN109684466A (en) * 2019-01-04 2019-04-26 钛氧(上海)教育科技有限公司 A kind of intellectual education advisor system
CN109684466B (en) * 2019-01-04 2023-10-13 钛氧(上海)教育科技有限公司 Intelligent education advisor system

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