抄録
We consider a sensor allocation problem for the Kalman-Bucy filter within an information theoretic framework. For the signal and the observation of Kalman-Bucy filter, the mutual information between them is determined by the power of the signal component in the innovations process, and we cannot make the mutual information larger without increasing the power of this term in the innovations process. Under a constraint that the mean square power of the term takes a preassigned value, a set of equations which were derived in our previous paper is applied obtain a recursive algorithm to compute the optimal gain matrix for the sensors which minimizes the least-squares estimation error.