Time series modeling of human operator dynamics in manual control tasksA time-series technique is presented for identifying the dynamic characteristics of the human operator in manual control tasks from relatively short records of experimental data. Control of system excitation signals used in the identification is not required. The approach is a multi-channel identification technique for modeling multi-input/multi-output situations. The method presented includes statistical tests for validity, is designed for digital computation, and yields estimates for the frequency responses of the human operator. A comprehensive relative power analysis may also be performed for validated models. This method is applied to several sets of experimental data; the results are discussed and shown to compare favorably with previous research findings. New results are also presented for a multi-input task that has not been previously modeled to demonstrate the strengths of the method.
Document ID
19840060659
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Biezad, D. J. (Purdue Univ. West Lafayette, IN, United States)
Schmidt, D. K. (Purdue University West Lafayette, IN, United States)