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[Author] Shinkichi INAGAKI(3hit)

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  • Multi-Hierarchical Modeling of Driving Behavior Using Dynamics-Based Mode Segmentation

    Hiroyuki OKUDA  Tatsuya SUZUKI  Ato NAKANO  Shinkichi INAGAKI  Soichiro HAYAKAWA  

     
    PAPER

      Vol:
    E92-A No:11
      Page(s):
    2763-2771

    This paper presents a new hierarchical mode segmentation of the observed driving behavioral data based on the multi-level abstraction of the underlying dynamics. By synthesizing the ideas of a feature vector definition revealing the dynamical characteristics and an unsupervised clustering technique, the hierarchical mode segmentation is achieved. The identified mode can be regarded as a kind of symbol in the abstract model of the behavior. Second, the grammatical inference technique is introduced to develop the context-dependent grammar of the behavior, i.e., the symbolic dynamics of the human behavior. In addition, the behavior prediction based on the obtained symbolic model is performed. The proposed framework enables us to make a bridge between the signal space and the symbolic space in the understanding of the human behavior.

  • Identification of Positioning Skill Based on Feedforward/Feedback Switched Dynamical Model

    Hiroyuki OKUDA  Hidenori TAKEUCHI  Shinkichi INAGAKI  Tatsuya SUZUKI  Soichiro HAYAKAWA  

     
    PAPER

      Vol:
    E92-A No:11
      Page(s):
    2755-2762

    To realize the harmonious cooperation with the operator, the man-machine cooperative system must be designed so as to accommodate with the characteristics of the operator's skill. One of the important considerations in the skill analysis is to investigate the switching mechanism underlying the skill dynamics. On the other hand, the combination of the feedforward and feedback schemes has been proved to work successfully in the modeling of human skill. In this paper, a new stochastic switched skill model for the sliding task, wherein a minimum jerk motion and feedback schemes are embedded in the different discrete states, is proposed. Then, the parameter estimation algorithm for the proposed switched skill model is derived. Finally, some advantages and applications of the proposed model are discussed.

  • Fault Detection and Diagnosis of Manipulator Based on Probabilistic Production Rule

    Shinkichi INAGAKI  Koudai HAYASHI  Tatsuya SUZUKI  

     
    PAPER

      Vol:
    E90-A No:11
      Page(s):
    2488-2495

    This paper presents a new strategy to detect and diagnose fault of a manipulator based on the expression with a Probabilistic Production Rule (PPR). Production Rule (PR) is widely used in the field of computer science as a tool of formal verification. In this work, first of all, PR is used to represent the mapping between highly quantized input and output signals of the dynamical system. By using PR expression, the fault detection and diagnosis algorithm can be implemented with less computational effort. In addition, we introduce a new system description with Probabilistic PR (PPR) wherein the occurrence probability of PRs is assigned to them to improve the robustness with small computational burden. The probability is derived from the statistic characteristics of the observed input and output signals. Then, the fault detection and diagnosis algorithm is developed based on calculating the log-likelihood of the measured data for the designed PPR. Finally, some experiments on a controlled manipulator are demonstrated to confirm the usefulness of the proposed method.