• 제목/요약/키워드: Control of learning

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거꾸로 학습 전략에 있어서 교양영어와 교양스페인어 학습자의 자기조절 학습능력에 관한 연구 (A Study on the Self-Regulating Learning Ability of General English and Spanish Learners in the Flipped Learning Strategy)

  • 신명희;강필운
    • 한국융합학회논문지
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    • 제10권4호
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    • pp.73-80
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    • 2019
  • 이 연구의 목적은 거꾸로 학습(Flipped Learning) 전략에 있어서 교양영어 학습자의 자기조절학습 능력이 전통 학습(Traditional Learning) 있어서의 자기조절학습 능력과 비교했을 때 유의미한 차이를 가져올 것이라는 연구 가설을 바탕으로 본 연구에서는 교양영어와 교양스페인어에 있어서 거꾸로 학습 전략이 학습자의 자기조절능력에 어떠한 영향을 미치는지를 고찰해보았다. 2018년 9월 10일부터 2018년 12월10일까지 교양 영어와 교양스페인어 수강생 총 81명을 대상으로 하였으며 사전 사후 자기조절 테스트를 통해서 1) 인지조절능력, 2) 동기조절능력, 3) 행동조절능력 세 개의 영역의 변화를 고찰했고 3개의 영역은 6개 하위영역, 총 65개의 항목으로 구성된다. 연구결과, 자기조절학습능력에 있어서 동기 조절의 경우 유의미한 결과가 나타나지 않았지만, 영어와 스페인어 수업 모두 인지 및 행동조절 학습능력에 있어서 통계적으로 유의한 차이를 보였다.

반복학습 제어를 사용한 신경회로망 제어기의 구현 (Realization of a neural network controller by using iterative learning control)

  • 최종호;장태정;백석찬
    • 제어로봇시스템학회:학술대회논문집
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    • 제어로봇시스템학회 1992년도 한국자동제어학술회의논문집(국내학술편); KOEX, Seoul; 19-21 Oct. 1992
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    • pp.230-235
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    • 1992
  • We propose a method of generating data to train a neural network controller. The data can be prepared directly by an iterative learning technique which repeatedly adjusts the control input to improve the tracking quality of the desired trajectory. Instead of storing control input data in memory as in iterative learning control, the neural network stores the mapping between the control input and the desired output. We apply this concept to the trajectory control of a two link robot manipulator with a feedforward neural network controller and a feedback linear controller. Simulation results show good generalization of the neural network controller.

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변분법을 이용한 재귀신경망의 온라인 학습 (A on-line learning algorithm for recurrent neural networks using variational method)

  • 오원근;서병설
    • 제어로봇시스템학회논문지
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    • 제2권1호
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    • pp.21-25
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    • 1996
  • In this paper we suggest a general purpose RNN training algorithm which is derived on the optimal control concepts and variational methods. First, learning is regared as an optimal control problem, then using the variational methods we obtain optimal weights which are given by a two-point boundary-value problem. Finally, the modified gradient descent algorithm is applied to RNN for on-line training. This algorithm is intended to be used on learning complex dynamic mappings between time varing I/O data. It is useful for nonlinear control, identification, and signal processing application of RNN because its storage requirement is not high and on-line learning is possible. Simulation results for a nonlinear plant identification are illustrated.

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퍼지-신경망 제어기를 이용한 불확실한 로보트 매니퓰레이터의 적응 학습 제어 (Adaptive Learning Control of an Uncertain Robot Manipulator Using Fuzzy-Neural Network Controller)

  • 김성현;최영길;김용호;전홍태
    • 전자공학회논문지B
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    • 제33B권5호
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    • pp.25-32
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    • 1996
  • This paper will propose the direct adaptive learning control scheme based on adaptive control technique and intelligent control theory for a nonlinear system. Using the proposed learning control scheme, we will apply to on-line control an uncertain but for model perfect matching, it's structure condition is known. The effectiveness of the proposed control schem will be illustrated by simulations of a robot manipulator.

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최적의 퍼지제어규칙을 얻기위한 퍼지학습법 (A Learning Algorithm for Optimal Fuzzy Control Rules)

  • 정병묵
    • 대한기계학회논문집A
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    • 제20권2호
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    • pp.399-407
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    • 1996
  • A fuzzy learning algorithm to get the optimal fuzzy rules is presented in this paper. The algorithm introduces a reference model to generate a desired output and a performance index funtion instead of the performance index table. The performance index funtion is a cost function based on the error and error-rate between the reference and plant output. The cost function is minimized by a gradient method and the control input is also updated. In this case, the control rules which generate the desired response can be obtained by changing the portion of the error-rate in the cost funtion. In SISO(Single-Input Single- Output)plant, only by the learning delay, it is possible to experss the plant model and to get the desired control rules. In the long run, this algorithm gives us the good control rules with a minimal amount of prior informaiton about the environment.

선형피드백시스템에 대한 직접학습제어 (Direct Learning Control for Linear Feedback Systems)

  • 안현식
    • 대한전기학회논문지:시스템및제어부문D
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    • 제54권2호
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    • pp.76-80
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    • 2005
  • In this paper, a Direct Learning Control (DLC) method is proposed for linear feedback systems to improve the tracking performance when the task of the control system is repetitive. DLC can generate the desired control input directly from the previously learned control inputs corresponding to other output trajectories. It is assumed that all the desired output functions given to the system have some relations called proportionality and it is shown by mathematical analysis that DLC can be utilized to genera additional control efforts for the perfect tracking. To show the validity and tracking performance of the proposed method, some simulations are performed for the tracking control of a linear system with a PI controller.

Robust control by universal learning network

  • Ohbayashi, Masanao;Hirasawa, Kotaro;Murata, Junichi
    • 제어로봇시스템학회:학술대회논문집
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    • 제어로봇시스템학회 1995년도 Proceedings of the Korea Automation Control Conference, 10th (KACC); Seoul, Korea; 23-25 Oct. 1995
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    • pp.123-126
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    • 1995
  • Characteristics of control system design using Universal Learning Network (U.L.N.) are that a system to be controlled and a controller are both constructed by U.L.N. and that the controller is best tuned through learning. U.L.N has the same generalization ability as N.N.. So the controller constructed by U.L.N. is able to control the system in a favorable way under the condition different from the condition of the control system in learning stage. But stability can not be realized sufficiently. In this paper, we propose a robust control method using U.L.N. and second order derivatives of U.L.N.. The proposed method can realize better performance and robustness than the commonly used Neural Network. Robust control considered here is defined as follows. Even though initial values of node outputs change from those in learning, the control system is able to reduce its influence to other node outputs and can control the system in a preferable way as in the case of no variation. In order to realize such robust control, a new term concerning the variation is added to a usual criterion function. And parameter variables are adjusted so as to minimize the above mentioned criterion function using the second order derivatives of criterion function with respect to the parameters. Finally it is shown that the controller constricted by the proposed method works in an effective way through a simulation study of a nonlinear crane system.

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안정된 로봇걸음걸이를 위한 견실한 제어알고리즘 개발에 관한 연구 (A Study on the Development of Robust control Algorithm for Stable Robot Locomotion)

  • 황원준;윤대식;구영목
    • 한국산업융합학회 논문집
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    • 제18권4호
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    • pp.259-266
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    • 2015
  • This study presents new scheme for various walking pattern of biped robot under the limitted enviroments. We show that the neural network is significantly more attractive intelligent controller design than previous traditional forms of control systems. A multilayer backpropagation neural network identification is simulated to obtain a learning control solution of biped robot. Once the neural network has learned, the other neural network control is designed for various trajectory tracking control with same learning-base. The main advantage of our scheme is that we do not require any knowledge about the system dynamic and nonlinear characteristic, and can therefore treat the robot as a black box. It is also shown that the neural network is a powerful control theory for various trajectory tracking control of biped robot with same learning-vase. That is, we do net change the control parameter for various trajectory tracking control. Simulation and experimental result show that the neural network is practically feasible and realizable for iterative learning control of biped robot.

대학교육에서의 CHANGE 플립러닝(Flipped Learning) 수업모형 개발 -교육방법및교육공학교과를 중심으로- (The Development of CHANGE Flipped Learning Instructional Model in Higher Education - base on the 'educational method and technology')

  • 정주영
    • 수산해양교육연구
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    • 제28권6호
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    • pp.1834-1847
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    • 2016
  • Main objectives of the this study are: to develop a model of "Flipped Leaning" that is designed to enhance self-directed learning, learning motivation and self-control, and to verify its effectiveness-in higher education. The verification process initially concentrated on the feasibility study of the model with a thorough literature review and case analyses; then, its general and practical applicability were tested with a field study. As a result, first, the CHANGE Class Model, specifically designed for effective and efficient "Flipped Learning", was developed. It is thus named for the stages that the learning process takes place in the model-i.e., (1) Check ${\rightarrow}$ (2) Ask ${\rightarrow}$ (3) Notice ${\rightarrow}$ (4) Group presentation ${\rightarrow}$ (5) Evaluation, and it emphasizes the dynamic, questions centered (i.e. back and forth between the students and the instructor as well as between the students) learning process. Second, the Model was instrumental in enhancing self-directed learning, learning motivation and self-control; thus, as a result, it significantly improved the effectiveness, the level of concentration and the attractiveness of the learning process. The value of this study lies in pointing to a clear plan to allow a student in higher learning to set-up a self-directed learning plan, to be able to control it while being continuously motivated to complete it.

An iterative learning approach to error compensation of position sensors for servo motors

  • Han, Seok-Hee;Ha, In-Joong;Ha, Tae-Kyoon;Huh, Heon;Ko, Myoung-Sam
    • 제어로봇시스템학회:학술대회논문집
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    • 제어로봇시스템학회 1993년도 한국자동제어학술회의논문집(국제학술편); Seoul National University, Seoul; 20-22 Oct. 1993
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    • pp.534-540
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    • 1993
  • In this paper, we present an iterative learning method of compensating for position sensor error. The previously known compensation algrithms need a special perfect position sensor or a priori information about error sources, while ours does not. To our best knowledge, any iterative learning approach has not been taken for sensor error compensation. Furthermore, our iterative learning algorithm does not have the drawbacks of the existing iterative learning control theories. To be more specific, our algorithm learns a uncertain function inself rather than its special time-trajectory and does not request the derivatives of measurement signals. Moreover, it does not require the learning system to start with the same initial condition for all iterations. To illuminate the generality and practical use of our algorithm, we give the rigorous proof for its convergence and some experimental results.

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