Variational Encrypted Model Predictive Control

πŸ“… 2026-03-19
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πŸ€– AI Summary
This work proposes a novel encrypted model predictive control (MPC) framework that enables efficient and privacy-preserving online inference. By reformulating the MPC problem as a sampling-based estimator, the approach naturally accommodates quadratic cost terms through distributional biasing and requires only encrypted polynomial operations during execution. For the first time, variational principles are integrated into encrypted MPC, eliminating intermediate decryptions and additional communication rounds. A dual parallelization mechanism is introduced to substantially enhance scalability. Theoretical analysis quantifies the impact of cryptographic approximation errors on solution optimality, while numerical simulations demonstrate the method’s computational efficiency and practical viability.

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πŸ“ Abstract
We develop a variational encrypted model predictive control (VEMPC) protocol whose online execution relies only on encrypted polynomial operations. The proposed approach reformulates the MPC problem into a sampling-based estimator, in which the computation of the quadratic cost is naturally handled by tilting the sampling distribution, thus reducing online encrypted computation. The resulting protocol requires no additional communication rounds or intermediate decryption, and scales efficiently through two complementary levels of parallelism. We analyze the effect of encryption-induced errors on optimality, and simulation results demonstrate the practical applicability of the proposed method.
Problem

Research questions and friction points this paper is trying to address.

encrypted model predictive control
variational methods
privacy-preserving control
homomorphic encryption
optimality under encryption
Innovation

Methods, ideas, or system contributions that make the work stand out.

Variational Encrypted MPC
Encrypted Polynomial Operations
Sampling-based Estimator
Tilted Sampling Distribution
Privacy-preserving Control
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