摘要:Accurate specification and prediction of the ionosphere-thermosphere environment, driven by external forcing, is crucial to the space community. In this work, we present a new transformative framework for data assimilation and calibration of the physical ionosphere-thermosphere models. The framework has two main components: (i) the development of a quasi-physical dynamic reduced-order model (ROM) that uses a linear approximation of the underlying dynamics and effect of the drivers, and (ii) data assimilation and calibration of the ROM through estimation of the ROM coefficients that represent the model parameters. A reduced-order surrogate for thermospheric mass density from the Thermosphere-Ionosphere-Electrodynamics General Circulation Model (TIE-GCM) was developed in previous work. This work concentrates on the second component of the framework—data assimilation and calibration of the TIE-GCM ROM. The new framework has two major advantages: (i) a dynamic ROM that combines the speed of empirical models for real-time capabilities with the predictive capabilities of physical models, which has the potential to facilitate improved uncertainty quantification using large ensembles, and (ii) estimation of model parameters rather than the driver(s)/input(s), which allows calibration of the model, thus avoiding degradation of model performance in the absence of continuous data. We demonstrate and validate the framework using simulated and real measurement scenarios. The simulated case uses Mass Spectrometer and Incoherent Scatter model output as measurements, while the real data case uses accelerometer-derived density estimates from CHAllenging Minisatellite Payload and Gravity Field and Steady-State Ocean Circulation Explorer. The framework is a first of its kind, simple yet robust and accurate method with high potential for providing real-time operational updates to the state of the upper atmosphere in the context of drag modeling for space situational awareness and space traffic management.