Backward Reachability for Polynomial Systems on A Finite Horizon
Pith reviewed 2026-05-25 01:49 UTC · model grok-4.3
The pith
The paper presents an optimization method to compute inner approximations of backward reachable sets for polynomial systems over a finite horizon, along with a controller that keeps trajectories inside a target tube.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
A method is presented to obtain an inner-approximation of the backward reachable set (BRS) of a given target tube, along with an admissible controller that maintains trajectories inside this tube. The proposed optimization algorithms are formulated as nonlinear optimization problems, which are decoupled into tractable subproblems and solved by an iterative algorithm using the polynomial S-procedure and sum-of-squares techniques. This framework is also extended to uncertain nonlinear systems with L_2 disturbances and L_∞ parametric uncertainties.
What carries the argument
The iterative algorithm that decouples the reachability optimization into tractable subproblems solved via the polynomial S-procedure and sum-of-squares techniques.
If this is right
- The method produces both an inner-approximated safe set and a controller that keeps trajectories inside the target tube.
- The same decoupled optimization extends directly to uncertain systems that include L2 disturbances and L-infinity parametric uncertainties.
- The approach applies to finite-horizon problems and has been tested on robotics and aircraft models that include control saturation.
- Inner approximations guarantee that every initial state inside the computed set can reach the target tube under the synthesized controller.
Where Pith is reading between the lines
- The iterative decoupling may allow the method to scale to moderate state dimensions if the sum-of-squares solvers remain tractable.
- Combining these inner sets with outer approximations from other reachability tools could produce tighter certified regions.
- Polynomial relaxations mentioned for non-polynomial dynamics suggest a route to broader classes of nonlinear systems.
- The controller output could be used to construct real-time safety filters that override nominal commands when the state approaches the boundary of the approximated set.
Load-bearing premise
The dynamical systems are polynomial or can be handled via polynomial relaxations so that sum-of-squares and S-procedure techniques apply directly to the subproblems.
What would settle it
For a low-dimensional polynomial system whose exact backward reachable set is known by other means, run the algorithm and verify that every state in the computed inner approximation can be driven into the target tube by the returned controller while staying inside the tube at every step.
Figures
read the original abstract
A method is presented to obtain an inner-approximation of the backward reachable set (BRS) of a given target tube, along with an admissible controller that maintains trajectories inside this tube. The proposed optimization algorithms are formulated as nonlinear optimization problems, which are decoupled into tractable subproblems and solved by an iterative algorithm using the polynomial S-procedure and sum-of-squares techniques. This framework is also extended to uncertain nonlinear systems with L_2 disturbances and L_{\infty} parametric uncertainties. The effectiveness of the method is demonstrated on several nonlinear robotics and aircraft systems with control saturation.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The paper presents a method to compute inner approximations of the backward reachable set (BRS) for polynomial systems over a finite horizon, together with an admissible controller that keeps trajectories inside a prescribed target tube. The approach formulates the problem as a nonlinear optimization, decouples it into subproblems, and solves them iteratively via the polynomial S-procedure and sum-of-squares (SOS) relaxations; the framework is extended to systems with L2 disturbances and L∞ parametric uncertainties and is illustrated on robotics and aircraft examples with input saturation.
Significance. If the iterative procedure is shown to produce valid inner approximations that respect the joint invariance constraints, the work would supply a practical SOS-based tool for finite-horizon safety verification and control synthesis on polynomial nonlinear systems, an area where exact BRS computation is intractable. The explicit handling of control saturation and the extension to uncertain dynamics are useful features, and the numerical demonstrations on concrete robotic and flight-control models provide evidence of applicability.
major comments (2)
- [§4] §4 (Iterative Algorithm): No theorem or proposition establishes that a fixed point of the decoupled subproblems satisfies the original coupled reachability and invariance conditions of the BRS. The manuscript states that each subproblem is solved via S-procedure relaxations, but does not derive that the recombination at convergence yields a valid inner approximation of the tube; accumulated slack from the individual relaxations could violate the joint constraints.
- [§5.2] §5.2 (Uncertain Systems): The extension to L2 disturbances and L∞ parametric uncertainties re-uses the same decoupled iteration without additional invariance arguments. It is therefore unclear whether the same fixed-point issue identified above is resolved or merely inherited for the robust case.
minor comments (2)
- Notation for the target tube and the polynomial vector fields is introduced without an explicit table of symbols; a compact notation summary would improve readability.
- Figure captions for the aircraft and quadrotor examples do not state the polynomial degrees used in the SOS relaxations or the iteration count at termination.
Simulated Author's Rebuttal
We thank the referee for the constructive feedback on our manuscript. We address each major comment point by point below, indicating planned revisions where appropriate.
read point-by-point responses
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Referee: [§4] §4 (Iterative Algorithm): No theorem or proposition establishes that a fixed point of the decoupled subproblems satisfies the original coupled reachability and invariance conditions of the BRS. The manuscript states that each subproblem is solved via S-procedure relaxations, but does not derive that the recombination at convergence yields a valid inner approximation of the tube; accumulated slack from the individual relaxations could violate the joint constraints.
Authors: We acknowledge that the manuscript does not contain a formal proposition establishing that a fixed point of the iteration necessarily satisfies the original coupled conditions in the presence of relaxation slack. The iterative procedure is motivated by tractability and is supported by numerical validation on the examples, but a rigorous characterization of the fixed-point property is indeed absent. We will revise §4 to include a new proposition that derives sufficient conditions (based on the structure of the polynomial S-procedure subproblems) under which the converged solution remains a valid inner approximation of the tube, explicitly addressing the potential accumulation of slack. revision: yes
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Referee: [§5.2] §5.2 (Uncertain Systems): The extension to L2 disturbances and L∞ parametric uncertainties re-uses the same decoupled iteration without additional invariance arguments. It is therefore unclear whether the same fixed-point issue identified above is resolved or merely inherited for the robust case.
Authors: We agree that the robust extension in §5.2 inherits the same theoretical gap. In the revised manuscript we will extend the new proposition introduced in §4 to the uncertain case, incorporating the additional invariance arguments required for L2 disturbances and L∞ parametric uncertainties. This will ensure that the fixed-point property and inner-approximation guarantee are stated uniformly for both the nominal and robust formulations. revision: yes
Circularity Check
No circularity; standard SOS framework
full rationale
The paper formulates an optimization problem for inner-approximating backward reachable sets using the polynomial S-procedure and sum-of-squares relaxations on decoupled subproblems, solved iteratively. These are established external techniques with no reduction of the central claim to self-definitional inputs, fitted parameters renamed as predictions, or load-bearing self-citations. The derivation chain is self-contained against standard benchmarks in polynomial optimization and does not exhibit any of the enumerated circularity patterns.
Axiom & Free-Parameter Ledger
axioms (1)
- domain assumption Dynamical systems are polynomial
Reference graph
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