SensorFault-Bench is a new CPS-grounded benchmark showing that clean-MSE rankings of forecasting models often disagree with their robustness under standardized sensor-fault scenarios across four real datasets.
Fault- tolerant connection of error-corrected qubits with noisy links
4 Pith papers cite this work. Polarity classification is still indexing.
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Bivariate bicycle codes enable a modular architecture that supports an order of magnitude more logical circuit volume per physical qubit than surface-code designs under circuit noise.
AdaFair-MARL enforces workload fairness as an explicit second-order cone constraint in cooperative MARL via adaptive primal-dual optimization, achieving near-perfect constraint satisfaction while preserving team performance.
An integrated pipeline uses CNN-based detection with sensor fusion, Bayesian statistics for flyover updates, and reconfigurable satellite scheduling to enhance wildfire monitoring in simulations based on real locations.
citing papers explorer
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Benchmarking Sensor-Fault Robustness in Forecasting
SensorFault-Bench is a new CPS-grounded benchmark showing that clean-MSE rankings of forecasting models often disagree with their robustness under standardized sensor-fault scenarios across four real datasets.
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Tour de gross: A modular quantum computer based on bivariate bicycle codes
Bivariate bicycle codes enable a modular architecture that supports an order of magnitude more logical circuit volume per physical qubit than surface-code designs under circuit noise.
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AdaFair-MARL: Enforcing Adaptive Fairness Constraints in Multi-Agent Reinforcement Learning
AdaFair-MARL enforces workload fairness as an explicit second-order cone constraint in cooperative MARL via adaptive primal-dual optimization, achieving near-perfect constraint satisfaction while preserving team performance.
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Automating the Wildfire Detection and Scheduling Pipeline with Maneuverable Earth Observation Satellites
An integrated pipeline uses CNN-based detection with sensor fusion, Bayesian statistics for flyover updates, and reconfigurable satellite scheduling to enhance wildfire monitoring in simulations based on real locations.