ENTRO-EVO · E-LAB-05 · ADAPTIVE ENTROPY WEIGHTING DASHBOARD

Ψ-Dashboard

Real-time Adaptive Entropy Weighting · Weight Evolution · Target Convergence
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NORMALIZED ENTROPY STATE · Ψ_norm
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Target Ψ*: 0.1
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w₁ (State)
Global awareness
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w₂ (Velocity)
Reflex response
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w₃ (Accel)
Intuition
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Control u(t)
[-1, 0] range
📐 Adaptive Entropy Weights (AEW)
w₁
Global State Weight
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w₂
Velocity/Reflex Weight
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w₃
Acceleration/Intuition Weight
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η
Learning Rate
0.025
🎛️ AEW Control Law Components
ComponentValueContribution to u(t)
w₁·σ(Ψ_norm - θ)----
w₂·tanh(dΨ/dt)----
w₃·tanh(d²Ψ/dt²)----
⚠️ Risk Scale Reference
Ψ_norm < 0.1✅ UNDER TARGET — System stable, minimal control
Ψ_norm ≈ 0.1✅ AT TARGET — Optimal entropy state
0.1 – 0.3⚠️ ELEVATED — AEW active, weight adaptation
0.3 – 0.6🔶 STRESSED — Strong control signal
Ψ_norm > 0.6🔴 CRITICAL — Maximum control, urgent adaptation
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