Abstract
This book studies the identification of systems in which only quantized output observations are available. The corresponding problem is termed quantized identification.
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Wang, L.Y., Yin, G.G., Zhang, JF., Zhao, Y. (2010). Introduction. In: System Identification with Quantized Observations. Systems & Control: Foundations & Applications. Birkhäuser Boston. https://doi.org/10.1007/978-0-8176-4956-2_1
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