itsobserveability
Itsobserveability is a term used in systems theory and data science to describe the extent to which a system's internal state can be inferred from available observations. While classical observability focuses on whether the state can be uniquely determined from outputs for a given model, itsobserveability expands this idea to include practical factors such as sensor noise, data sparsity, sensor placement, model misspecification, and time-varying dynamics. In practice, it characterizes identifiability and inferability of hidden variables within a dynamical system over a time horizon.
For linear time-invariant systems, observability is determined by the rank of the observability matrix. Itsobserveability, in
Applications span engineering, robotics, environmental monitoring, economics, and epidemiology, where designers seek to maximize itsobserveability through
See also: Observability, State estimation, Kalman filter, Identifiability.