--- # Front Matter(封面与前置页) ## Title(题目) **A Mechanism-Driven Continuous-Time Model for Smartphone Battery Drain Under Constant-Power Loads: Component Power Mapping, Electro-Thermal-Aging Coupling, and Feasibility-Based Shutdown Prediction** (若你们中文论文: **基于恒功率负载闭环的智能手机电池连续时间机理模型:功耗分解、热-电-老化耦合与可行性掉电判据**) --- ## Team Information(队伍信息:按比赛模板填写) * **Team Control Number:** [填写] * **School/Institution:** [填写] * **Team Members:** [填写] * **Date:** [填写] > 注:这一块通常由比赛提交模板决定,你只要把占位符替换成官方要求格式即可。 --- ## Abstract(摘要) Smartphone runtime is governed by multi-source, time-varying power demands from the screen, CPU, and wireless communication, and it often exhibits nonlinear behaviors such as abrupt shutdown at low state-of-charge (SOC), low temperature, or advanced aging. To capture these mechanisms, we develop a continuous-time, physics-informed model featuring a state vector (\mathbf{x}(t)=[z(t),v_p(t),T_b(t),S(t),w(t)]^\top), where (z) is SOC, (v_p) is polarization voltage (memory), (T_b) is battery temperature, (S) is state-of-health (SOH), and (w) represents a continuous network “tail” state. Exogenous inputs (\mathbf{u}(t)=[L(t),C(t),N(t),\Psi(t),T_a(t)]^\top) describe screen brightness, CPU load, network activity, signal quality, and ambient temperature, respectively. Total power demand is decomposed explicitly into screen/CPU/network components, with the network term incorporating a signal-quality penalty and tail dynamics. On the battery side, a first-order equivalent circuit model (ECM) is coupled to the load through a constant power load (CPL) closure, yielding a nonlinear current–voltage feedback and a feasibility discriminant (\Delta(t)\ge 0) that explains voltage collapse and sudden shutdown. Temperature- and SOH-dependent internal resistance and effective capacity are included via Arrhenius and capacity-scaling relations, while a compact SEI-inspired degradation law governs SOH evolution. For robustness and device realism, we add three lightweight refinements: (i) a low-SOC regularization in the OCV model, (ii) a nonnegative polarization heat formulation, and (iii) a temperature-dependent current cap representing OS/PMIC throttling. The resulting framework supports numerical simulation, time-to-empty (TTE) prediction, uncertainty quantification, and actionable power-management recommendations. --- ## Keywords(关键词) Smartphone battery drain; constant power load (CPL); equivalent circuit model (ECM); electro-thermal coupling; battery aging (SOH); network tail energy; feasibility discriminant; time-to-empty (TTE) --- # Summary Sheet(MCM 一页摘要页 / Executive Summary) > **说明**:这一页要“像海报一样快读”。下面版本是可直接交稿的结构;你们跑完仿真后把括号内结果补上即可。 ## Problem We are asked to model smartphone battery drain in continuous time under realistic, time-varying usage. The model must predict battery terminal voltage and SOC evolution and determine the time-to-empty (TTE), while explaining nonlinear shutdown behaviors (e.g., abrupt power-off before SOC reaches zero) under adverse conditions such as poor signal quality, low temperature, and aging. ## Model Overview **States and inputs.** We define the state vector [ \mathbf{x}(t)=[z(t),v_p(t),T_b(t),S(t),w(t)]^\top, ] where (z) is SOC, (v_p) is polarization voltage, (T_b) is battery temperature, (S) is SOH, and (w) is the continuous network tail state. Inputs are [ \mathbf{u}(t)=[L(t),C(t),N(t),\Psi(t),T_a(t)]^\top, ] describing brightness, CPU load, network activity, signal quality, and ambient temperature. **Component-level power mapping.** Total demanded power is decomposed as [ P_{\mathrm{tot}}=P_{\mathrm{bg}}+P_{\mathrm{scr}}(L)+P_{\mathrm{cpu}}(C)+P_{\mathrm{net}}(N,\Psi,w), ] with superlinear screen/CPU mappings and an explicit signal-quality penalty plus tail term in the network power. **Battery dynamics and CPL closure.** A first-order ECM gives terminal voltage [ V_{\mathrm{term}}=V_{\mathrm{oc}}(z)-v_p-I R_0(T_b,S). ] The load is modeled as a constant power load (CPL), [ P_{\mathrm{tot}}=V_{\mathrm{term}}I, ] leading to a quadratic current solution and a feasibility discriminant [ \Delta=(V_{\mathrm{oc}}-v_p)^2-4R_0P_{\mathrm{tot}}. ] When (\Delta<0), maintaining the demanded power becomes infeasible, providing a mechanism for voltage collapse and abrupt shutdown. **Electro-thermal-aging coupling.** SOC, polarization, temperature, and SOH evolve via coupled ODEs (including Arrhenius resistance, temperature/SOH-dependent effective capacity, and an SEI-inspired SOH decay law). Network tail energy is captured by a continuous-time tail state (w(t)). **Robustness refinements (lightweight, non-invasive).** 1. Low-SOC regularization in OCV using (z_{\mathrm{eff}}=\max(z,z_{\min})) to avoid singularity. 2. Nonnegative polarization heat via (v_p^2/R_1) in the thermal source term. 3. A temperature-dependent current cap (I=\min(I_{\mathrm{CPL}},I_{\max}(T_b))) to represent OS/PMIC throttling. ## Numerical Method We solve the coupled ODEs using RK4 (or an adaptive Runge–Kutta method) with a nested algebraic current evaluation at each substep. Step size is constrained by the polarization time constant (\tau_p=R_1C_1), and convergence is verified by step-halving until (|z_{\Delta t}-z_{\Delta t/2}|_\infty<10^{-4}), with TTE changes below 1%. ## Key Results (to be filled with your simulations) * **Baseline runtime (TTE):** mean (\approx) [***] h, median (\approx) [***] h, 5th–95th percentile ([***],[***]) h under the baseline usage scenario. * **Sudden shutdown mechanism:** infeasibility events ((\Delta<0)) occur primarily when [high demand + elevated (R_0)] coincide (e.g., weak signal (\Psi\downarrow), low (T_b), low (S)), precipitating rapid voltage collapse. * **Impact of throttling (current cap):** applying (I_{\max}(T_b)) increases the 5th-percentile TTE by approximately [***]%, and reduces infeasibility/shutdown-risk events by [***]%. * **Sensitivity (Sobol):** the largest total-effect indices are associated with [(k_N,\kappa)] under weak-signal regimes and with [(k_L,\gamma)] under high-brightness usage; ambient temperature (T_a) shows strong interaction effects via (R_0(T_b,S)) and (Q_{\mathrm{eff}}(T_b,S)). ## Conclusions We present a mechanism-driven continuous-time smartphone battery model that unifies (i) component-level power demand with explicit signal-quality effects and network tail energy, (ii) an ECM battery model coupled through a CPL closure, and (iii) electro-thermal-aging interactions. The feasibility discriminant (\Delta) provides an interpretable explanation for abrupt shutdown behaviors beyond simple SOC depletion. ## Recommendations * **User-level:** reduce brightness (L) and avoid sustained high-throughput activity (N) in poor signal conditions ((\Psi) low) to mitigate network power amplification and tail energy. * **System-level (OS/PMIC):** implement adaptive power caps or temperature-dependent current limits to prevent CPL-driven current escalation at low voltage/high resistance, thereby improving worst-case runtime and reducing collapse risk. * **Network-level:** tail-state-aware scheduling (batching transmissions) can reduce (w(t)) and tail energy, improving TTE with minimal user impact. ---