Full toolchain port. Numerical equivalence verified against MATLAB:
- main_mode_sweep.jl: every mode's final state matches MATLAB to 3-4 dp
- reach_operation.jl: per-halfspace margins match MATLAB exactly
- barrier_lyapunov.jl: per-halfspace bounds match (best Qbar from sweep
yields max|dT_c| = 33.228 K either side)
- barrier_compare_OL_CL.jl: OL gamma 1.038e13, CL gamma 1.848e4
matching the MATLAB result; LQR helps by ~20,000x on every halfspace.
Phase summary:
Phase 1: pke_solver.jl, plot_pke_results.jl (Plots.jl), main_mode_sweep.jl
Phase 2: reach_linear.jl, reach_operation.jl, barrier_lyapunov.jl,
barrier_compare_OL_CL.jl, load_predicates.jl
Phase 3 (this commit): delete plant-model/ entirely, delete reach
code from reachability/ keeping predicates.json + docs,
git mv julia-port/ -> code/, update root README + CLAUDE,
write code/CLAUDE.md and code/README.md, update reach
README + WALKTHROUGH file paths, journal preamble note
that pre-port entries reference MATLAB paths.
Why now: prompt-neutron stiffness in nonlinear reach made it clear we
need TMJets, which is Julia. Already had the Julia plant model
working and matching MATLAB. Two languages = two sources of truth =
two places to drift. One language, one truth.
Manifest.toml gitignored. .mat results gitignored.
Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
41 lines
1.4 KiB
Julia
41 lines
1.4 KiB
Julia
#!/usr/bin/env julia
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#
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# sim_sanity.jl — verify the Julia port matches the MATLAB result.
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#
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# Reproduces main.m Run 2 (ctrl_operation under 100% -> 80% Q_sg step)
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# and prints the final state, which should agree with MATLAB to ~1e-3.
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using Pkg
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Pkg.activate(joinpath(@__DIR__, ".."))
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using OrdinaryDiffEq
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include(joinpath(@__DIR__, "..", "src", "pke_params.jl"))
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include(joinpath(@__DIR__, "..", "src", "pke_th_rhs.jl"))
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include(joinpath(@__DIR__, "..", "controllers", "controllers.jl"))
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plant = pke_params()
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x0 = pke_initial_conditions(plant)
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Q_sg = t -> plant.P0 * (1.0 - 0.2 * (t >= 30))
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ref = (; T_avg = plant.T_c0)
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function rhs!(dx, x, p, t)
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u = ctrl_operation(t, x, plant, ref)
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pke_th_rhs!(dx, x, t, plant, Q_sg, u)
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end
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prob = ODEProblem(rhs!, x0, (0.0, 600.0))
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sol = solve(prob, Rodas5(); reltol=1e-8, abstol=1e-10)
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xf = sol.u[end]
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CtoF(T) = T * 9/5 + 32
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println("\n=== Julia port sanity — ctrl_operation under 100% -> 80% Q_sg step ===")
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println(" Final t = ", sol.t[end])
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println(" n = $(round(xf[1]; digits=4)) (expect ~0.800)")
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println(" T_f = $(round(CtoF(xf[8]); digits=2)) F (expect ~616.6)")
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println(" T_avg = $(round(CtoF(xf[9]); digits=2)) F (expect ~587.8)")
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println(" T_cold = $(round(CtoF(xf[10]); digits=2)) F (expect ~561.4)")
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u_final = ctrl_operation(sol.t[end], xf, plant, ref)
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println(" u = $(round(u_final/plant.beta; digits=4)) \$ (expect ~-0.0068)")
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