Research Report. FD807 Electric Vehicle Component Sizing vs. Vehicle Structural Weight Report

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RD.9/175.3 Ricardo plc 9 1 FD7 Electric Vehicle Component Sizing vs. Vehicle Structural Weight Report Research Report Conducted by Ricardo for The Aluminum Association 9 -

RD.9/175.3 Ricardo plc 9 2 Scope of Work This report was generated at the request of the Aluminum Association. The purpose of this study is to evaluate the impact of vehicle structural weight reduction on Electric Vehicle powertrain component size for various operating range targets. Ricardo used previous data from the vehicle weight reduction study on fuel economy for light duty vehicles [FB769] to modify the small car and SUV models for EV operation. The FTP75 cycle was used to size the initial electric powertrain to achieve a and miles range. Also reported in this report is the range based on the HWFET cycle and 45 / mph steady state operation. The baseline EV performance [- mph, - mph] were kept comparable to the initial conventional vehicle. For each iteration, the electrical powertrain weight was computed and deducted from the original conventional powertrain. The vehicle structural weight was updated based the new powertrain mass and size based on the Aluminum Association s structural weight computation. The electrical powertrain was then re-sized iteratively to keep range constant at similar performance.

RD.9/175.3 Ricardo plc 9 3 Content This report consists of the following sections: Conventional powertrain mass estimates EV Modeling and Assumptions Small Car EV sizing results Small Car design space evaluation FTP and HWFET Results Small SUV EV sizing Results Small SUV design space evaluation FTP and HWFET Results Weight Iterations and further optimization Conclusion.

RD.9/175.3 Ricardo plc 9 4 Conventional Powertrain Masses The original conventional powertrain masses for the two vehicles were estimated in the table below. The new EV powertrain masses will be estimated and compared for both vehicles. They do not include the fuel tank and battery.

RD.9/175.3 Ricardo plc 9 5 Content Conventional powertrain mass estimates EV Modeling and Assumptions Small Car EV sizing results Small Car design space evaluation FTP and HWFET Results Small SUV EV sizing Results Small SUV design space evaluation FTP and HWFET Results Weight Iterations and further optimization Conclusion.

RD.9/175.3 Ricardo plc 9 6 EV Modeling General Assumptions The EV vehicle was modeled and performance was measured using the following assumptions: The base EV rolling resistance coefficient and aero coefficient were unchanged from the baseline conventional numbers The EV powertrain is simplified to only use 1 fixed final drive ratio The number reported in this report for battery capacity represent the total capacity as opposed to usable capacity unless noted otherwise The usable SOC range was limited to a to.25 range No thermal system simulation was performed The battery sizing was solely based on the FTP75 cycle results The motor sizing was based on the FTP75, - mph acceleration and top speed No additional performance for sizing was used in the analysis No additional load were added to the battery other than the propulsion motor request Motor was assumed to be capable of sustaining acceleration performance and top speed within the simulated transient time

RD.9/175.3 Ricardo plc 9 7 EV Models Model Conversion from FB769 The following vehicle parameters were kept unchanged in the conversion from the Conventional Powertrain from the previous study to the new Electrical Powertrain. The EV powertrain was modeled using Ricardo EASY5 Powertrain Library. Note: the constant portion of the rolling resistance is dependant on vehicle mass and hence will vary as vehicle mass is updated. * m 2 Conventional Small Vehicle Battery Model Control Module Small Electric Vehicle Driver Model Vehicle Model Motor/Generator model Final Drive Data Transferred * Cd = aero coefficient, A = frontal area

Power [kw] Motor Torque [N.m] 6 6 8 8 2 2 4 8 2 4 2 4 6 8 6 8 2 4 4 RD.9/175.3 4 Ricardo plc 9 8 Basic Modeling Inputs Description The electric powertrain is populated with the following data : Battery [Lithium Ion] Open Circuit Voltage: 3 V SOC range [usable]: -.25 Usable energy to mass of pack: approx.115 W-h/kg Usable energy to volume of pack: approx.155 W-h/L Price for Total energy: $7/kWh as provided by the Aluminum Association Electric Motor / Generator Performance and Efficiency scaled based on UQM 125 kw motor, N.m machine Motor and Generator Efficiency plotted on the right Max Speed maintained at rpm Power Density: approx. 3.5 kw/kg kept constant Motor Controller Control Electric Motor based on driver vehicle speed demand 95% Efficiency in Power Conversion Regen-braking threshold set at N braking, when throttle = Mass approximated to 14 kg. Fixed Final Drive Sized for both vehicles, 98% efficiency 2 1 4 2 8 6 2 6 4 4 2 6.74 6.82 2 4 6 8.58 Motor Speed [RPM] 1.58 2 8 6 6 8 4 2 4 2 4 2 8 Operating Points [Motoring] 4 8 2 4 2 4 6 Motor Characteristics 4 6 8 2 Operating Points [Generator] 4 8 2 4 2 4 8 6 2 4 6 4 Generator Characteristics.54 2.56.54.56.58.5.6 4 2 Generator Speed [RPM]

EV Models Electrical Powertrain Modeling and Assumptions The small car and SUV electric powertrain components [battery and motor size, final ratio] are sized in order to achieve the following vehicle performance: Ranges: miles miles Acceleration: - mph: similar to baseline conventional vehicles [within 1-2s] Top Speed: Around -1 mph [similar to published Volt, BMW Mini EV information] As the vehicle weight will be modified, vehicle weight effect and its interactions with the rest of the electrical components is studied via Design of Experiments. The DoE design variables are: Battery size: kwh [usable energy] Motor / Generator size [linear scaling of the torque axis in efficiency maps]: 1 kw Final Drive Ratio: 4:1 8:1 Vehicle Weight Reduction: kg Max Torque Speed range [% to % of motor speed range] Scatterplot 3D Data Columns Battery kwh FDR RD.9/175.3 Ricardo plc 9 9

RD.9/175.3 Ricardo plc 9 Content Conventional powertrain mass estimates EV Modeling and Assumptions Small Car EV sizing results Small Car design space evaluation FTP and HWFET Results Small SUV EV sizing Results Small SUV design space evaluation FTP and HWFET Results Weight Iterations and further optimization Conclusion.

Motor Torque [N.m] Power [kw] 2 4 6 8 8 2 6 8 8 6 2 4 4 4 2 4 RD.9/175.3 4 Ricardo plc 9 11 Small Car EV Base Model Design [ & miles range] Mass Constant @ 14 kg The base Mini EV set up is based on FTP results for range, acceleration performance and top speed [limit mph]. Operating Points [Motoring] 1 4 2 8 6 2 6 4 2 8 4 FTP motor operating points [Hz] mph 4 2 6 8 6 8 4 6 8.58 Motor Speed [RPM].58 4 2 2 4 2 4 2 4 6 8 2 4 2 Conventional Vehicle - mph =.3s Operating Points [Generator] 6 6 8 8 2 4 Brake Regen accounts for 19.3% of the achieved range 4 FTP generator operating points [Hz]11 6 2 8 6 8 2 4.62 4 6.54 8 8.54.56.56.58 8 6 2 2 4 4 6.58 2 4 Generator Speed [RPM]

Motor Torque [N.m] 2 4 6 8 8 2 6 8 8 6 2 4 4 Power [kw] 6 6 8 8 2 2 4 2 4 6 8 8 6 2 4 Power [kw] 8 2 4 4 Motor Torque [N.m] 4 2 4 Small Car EV Base Model Operation HWFET range is 39.4 miles with the 14.6 kwh [total] battery, and 77.5 mi with the 28.7 kwh [total] battery. Lower brake regen is available on the HWFET. HWFET Operating Points Operating Points [Motoring] FTP and Top Speed Operating Points Operating Points [Motoring] 4 2 8 6 2 6 4 2 8 4 4 2 8 6 2 6 4 2 8 4 1 1 4 2 4 2 Top Speed mph 6 8 6 8 4 6 8.58 Motor Speed [RPM].58 4 2 2 4 2 4 2 4 6 8 Operating Points [Generator] 2 4 2 6 8 6 8 4 6 8.58 Motor Speed [RPM].58 4 2 2 4 2 4 2 4 6 8 Operating Points [Generator] 2 4 2 4 4 6 6 8 2 4 8 2 8 2 4 6 4 4 8 2 4 8 6 2 4 6 4.54 2.56.54.56.58.5.6 4 2 Brake Regen accounts for 4% of the achieved range Generator Speed [RPM] 4 6.54 4 Generator Speed [RPM] RD.9/175.3 Ricardo plc 9 6 6 6 8 8 2 8 2 4 6 8 2 4.62 8 8.54.56.56.58 4 8 6 2 2 4 4 6 Brake Regen accounts for 19.3% of the achieved range.58 2 12

RD.9/175.3 Ricardo plc 9 13 Content Conventional powertrain mass estimates EV Modeling and Assumptions Small Car EV sizing results Small Car design space evaluation FTP and HWFET Results Small SUV EV sizing Results Small SUV design space evaluation FTP and HWFET Results Weight Iterations and further optimization Conclusion.

mi range [FTP] mi range [FTP] Motor Torque [N.m] Power [kw] 2 8 2 4 6 6 8 8 2 2 4 8 2 4 8 2 8 6 4 4 RD.9/175.3 Ricardo plc 9 14 Small SUV EV Base Model Design [ & miles range] Contour Profiler The base small SUV EV set up is based on FTP results for range, acceleration performance and top speed [limit mph]. Higher FDR were needed to meet - mph acceleration [s vs. 9.3s conventional]. HorizVert Factor Battery kwh FDR WeightReductionkg RatedSpeedFactor Response Range MotorEf f RMS - time [s] - time [s] Top Speed [mph] 1 1 7 1 Range Current X 41.421811 92.16.4 Contour.5 91 13.75 12 2.5 Current Y 134.4783 573263 94.3416 5.1775784 11.918718 8.59275 Lo Limit...... Mass Constant @ 1928 kg Hi Limit...... 1 mph top speed line Range 2 1 4 2 6 6 2 6 4 RMS - time [s ] Form ula 2 4.58 Motor Speed [RPM].58 2 8 4 4 2 6 8 4 6 8 2 4 Operating Points [Motoring] 4 2 4 2 4 2 4 6 8 6 8 Top Speed 91 mph 1 8 BatterykWh BatterykWh Operating Points [Generator] BatterykWh 1 1 1 9 11 1 mph top speed line 9s time on - mph s time on - mph 85 mph top speed line 12 - time [s ] Form ula 13 1 14 Top Speed [mph] 1 15 25 35 45 Battery kwh MotorEff BatterykWh - time [s ] Form ula 6 6 8 2 4 BatterykWh 8 8 4 6 2 2 4 Top Speed [mph] Brake Regen accounts for 21.4% of the achieved range 4 8 8 6 2 4 6 4 BatterykWh 2 4.54 2.56.54.56.58.5.6 4 2 Generator Speed [RPM]

Power [kw] 6 6 8 8 2 2 4 8 2 4 Motor Torque [N.m] 2 8 2 4 8 2 8 6 4 4 Power [kw] 2 8 2 4 6 6 8 8 2 2 4 8 2 4 Motor Torque [N.m] 8 2 8 6 4 4 Small EV Base Model Operation HWFET range is also 37.5 miles with the 19.5 kwh [total] battery, and 73.5 mi with the 38.3 kwh [total] battery. FTP Operating Points Operating Points [Motoring] HWFET Operating Points Operating Points [Motoring] 2 1 4 2 6 6 2 6 4 2 8 4 4 4 Top Speed 91 mph 2 1 4 2 6 6 2 6 4 8 4 2 4 4 2 4.58 Motor Speed [RPM].58 2 6 8 4 6 8 2 4 4 2 2 4 2 4 6 8 6 8 Operating Points [Generator] 2 4.58 Motor Speed [RPM].58 2 6 8 4 6 8 2 4 4 2 2 4 2 4 6 8 6 8 Operating Points [Generator] 6 6 8 2 4 Brake Regen accounts for 21.4% of the achieved range 4 6 6 8 2 4 4 Brake Regen accounts for 4% of the achieved range 8 8 4 6 2 2 4 2 4 8 8 6 2 4 6 4.54 2.56.54.56.58.5.6 4 2 Generator Speed [RPM] 8 8 4 6 2 2 4 2 4 8 8 6 2 4 6 4.54 2.56.54.56.58.5.6 4 2 Generator Speed [RPM] RD.9/175.3 Ricardo plc 9 15

RD.9/175.3 Ricardo plc 9 16 Content Conventional powertrain mass estimates EV Modeling and Assumptions Small Car EV sizing results Small Car design space evaluation FTP and HWFET Results Small SUV EV sizing Results Small SUV design space evaluation FTP and HWFET Results Weight Iterations and further optimization Conclusion.

RD.9/175.3 Ricardo plc 9 17 Weight Iterations Cases The Aluminum Association provided the new vehicle weights for 4 architecture cases. The new weights were plugged in the model and the battery was resized in order to keep the EVs range to and miles. Two iterations were performed in order to match the EV powertrain mass to the new vehicle mass. Battery rating and cost difference with the initial conventional vehicle weight is computed. The EV powertrain was also re-sized to further optimize for efficiency. Case 1: Weight Represent a Series Hybrid / Extended EV Configuration with Steel Structure Use Base Vehicle Steel Structure Partially removed the conventional powertrain weight to represent a Extended EV / Series Hybrid * Added EV Powertrain Weight Case 2: Weight Represent a Series Hybrid / Extended EV Configuration with Aluminum Structure Use Aluminum Structure Partially removed the powertrain weight to represent a Extended EV / Series Hybrid * Added EV Powertrain Weight Case 3: Weight Represent a Full EV Configuration with Steel Structure Use Steel Structure Removed the entire baseline conventional powertrain weight Added EV Powertrain Weight Case 4: Weight Represent a Full EV Configuration with Aluminum Structure Use Aluminum Structure Removed the entire base baseline conventional powertrain weight Added EV Powertrain Weight * Note: All performance runs are in full EV mode only.

RD.9/175.3 Ricardo plc 9 18 Un-optimized Weight Iterations Results Small Car Two iterations are necessary to match the vehicle weight to the EV powertrain weight. The Aluminum structure provided the opportunity to reduce battery cost by about $5,. Further optimization is necessary in order to match the motor rating to the new vehicle weight with a potential secondary effect on downsizing the battery. 2 Case 1: Weight Represent a Series Hybrid / Extended EV Configuration with Steel Structure Case 2: Weight Represent a Series Hybrid / Extended EV Configuration with Aluminum Structure Case 3: Weight Represent a Full EV Configuration with Steel Structure Case 4: Weight Represent a Full EV Configuration with Aluminum Structure

RD.9/175.3 Ricardo plc 9 19 Un-optimized Weight Iterations Results Small SUV Two iterations are necessary to match the vehicle weight to the EV powertrain weight. The Aluminum structure provided the opportunity to reduce battery cost by about $6,. Further optimization is necessary in order to match the motor rating to the new vehicle weight with a potential secondary effect on downsizing the battery. 2 Case 1: Weight Represent a Series Hybrid / Extended EV Configuration with Steel Structure Case 2: Weight Represent a Series Hybrid / Extended EV Configuration with Aluminum Structure Case 3: Weight Represent a Full EV Configuration with Steel Structure Case 4: Weight Represent a Full EV Configuration with Aluminum Structure

RD.9/175.3 Ricardo plc 9 Powertrain Optimization Response Surface Models [RSM] are created for: FTP Range [design target] HWFET Range Steady State at 45 and mph Acceleration: - & - mph Top Speed The RSM R 2 are around 9, hence the models are accurate to optimize for range while constraining for acceleration and top speed. Once the design variables are set using the RSM, the model is run to check for the performance. The table on the right shows the prediction profile for the small car, Case 4 [ mi range]. All the RSM plots for each cases are in Appendix A. Profiler Prediction Profiler FTP Range.18272 Range HWFET 32.95398 - Time 5.23485 - Time 9.936813 Top Speed mph 2.36 45 mph Range 37.26913 mph Range 21.68829 1 1 13 11 9 7 5 3 1 1 1 1.4.45.5.55 5 5.9 Battery kwh 519.9 FDR 641.5 WeightReductionkg RatedSpeedFactor

RD.9/175.3 Ricardo plc 9 21 Small Car Results 2 See Appendix A for plots Case 1: Weight Represent a Series Hybrid / Extended EV Configuration with Steel Structure Case 2: Weight Represent a Series Hybrid / Extended EV Configuration with Aluminum Structure Case 3: Weight Represent a Full EV Configuration with Steel Structure Case 4: Weight Represent a Full EV Configuration with Aluminum Structure

RD.9/175.3 Ricardo plc 9 22 Small Car Results Energy Usage Case 1: 15 kg [Regen = 2%] Case 2: 31 kg [Regen = %] Case 3: 781 kg [Regen = 18.1%] Case 4: 627 kg [Regen = 15.6%]

RD.9/175.3 Ricardo plc 9 23 Small Car Results Pareto Plots [Range] Based on a quadratic regression analysis order, the pareto plots show that the main effects for vehicle range improvement are driven by the battery size, vehicle weight reduction and the interaction between battery size and weight reduction. The FTP range is also more sensitive to the vehicle weight than the other cycle. FDR trends are negative but acceleration time would be inversely affected multi-ratio transmission would enable optimization of the range on a wider range of operation. Note: The plot represents the effect of the design variables on range while unconstrained by vehicle acceleration performance

RD.9/175.3 Ricardo plc 9 24 Small SUV Results 2 See Appendix A for plots Case 1: Weight Represent a Series Hybrid / Extended EV Configuration with Steel Structure Case 2: Weight Represent a Series Hybrid / Extended EV Configuration with Aluminum Structure Case 3: Weight Represent a Full EV Configuration with Steel Structure Case 4: Weight Represent a Full EV Configuration with Aluminum Structure

RD.9/175.3 Ricardo plc 9 25 Small SUV Results Energy Usage Case 1: 1719 kg [Regen = 22.7%] Case 2: 14 kg [Regen = 21.4%] Case 3: 1132 kg [Regen = 18.3%] Case 4: 927 kg [Regen = 15.6%] Case 1: Weight Represent a Series Hybrid / Extended EV Configuration with Steel Structure Case 2: Weight Represent a Series Hybrid / Extended EV Configuration with Aluminum Structure Case 3: Weight Represent a Full EV Configuration with Steel Structure Case 4: Weight Represent a Full EV Configuration with Aluminum Structure

RD.9/175.3 Ricardo plc 9 26 Small SUV Results Pareto Plots [Range] Based on a quadratic regression analysis order, the pareto plots show that the main variables for vehicle range improvement are the battery size, vehicle weight reduction and the interaction between battery size and weight reduction. The FDR effect on the FTP is different than for the other cycles hence an optimized system for a wide range of operation would need more than 1 fixed ratio. The FTP sensitivity to battery size is lower than the other cycles thanks to higher braking regeneration. Note: The plot represents the effect of the design variables on range while unconstrained by vehicle acceleration performance

RD.9/175.3 Ricardo plc 9 27 Content Conventional powertrain mass estimates EV Modeling and Assumptions Small Car EV sizing results Small Car design space evaluation FTP and HWFET Results Small SUV EV sizing Results Small SUV design space evaluation FTP and HWFET Results Weight Iterations and further optimization Conclusion.

RD.9/175.3 Ricardo plc 9 28 APPENDIX A RESPONSE SURFACE PREDICTIONS PLOTS

RD.9/175.3 Ricardo plc 9 29 Appendix A: Small Car Case 1 [ mi] Profile r Prediction Profiler FTP Range.54453 Range HWFET 37.31152 - Time 4.769 1 1 13 11 9 7 5 3 - Time 9.979422 Top Speed mph.1949 45 mph Range 41.35998 mph Range 27.962 1 1 1 Note: Battery size is Usable kwh RSM R 2 = 9 1.4.45.5.55 5 8.7 Battery kwh 1.4 537.1 FDR 79.2 WeightReductionkg.5837 RatedSpeedFactor

Appendix A: Small Car Case 2 [ mi] Profile r Prediction Profiler FTP Range 39.91969 Range HWFET 36.14653 - Time 4.949335 1 1 13 11 9 7 5 3 - Time.3 Top Speed mph.4789 45 mph Range.651 mph Range 26.27386 1 1 1 Note: Battery size is Usable kwh RSM R 2 = 9 1.4.45.5.55 5 7.88 Battery kwh 88.8 535.5 FDR 247.7 WeightReductionkg.5837 RatedSpeedFactor RD.9/175.3 Ricardo plc 9

Appendix A: Small Car Case 3 [ mi] Profile r Prediction Profiler FTP Range.63395 Range HWFET 35.2468 - Time 4.75367 1 1 13 11 9 7 5 3 - Time.644 Top Speed mph.1156 45 mph Range 39.313 mph Range 23.979 1 1 1 Note: Battery size is Usable kwh RSM R 2 = 9 1.4.45.5.55 5 6.77 Battery kwh 73.8 535.5 FDR 489.5 WeightReductionkg 11 RatedSpeedFactor RD.9/175.3 Ricardo plc 9 31

Appendix A: Small Car Case 4 [ mi] Profile r Prediction Profiler FTP Range.53589 Range HWFET 32.917 - Time 4.844657 1 1 13 11 9 7 5 3 - Time 9.5829 Top Speed mph 99.73798 45 mph Range 36.92874 mph Range 21.7946 1 1 1 Note: Battery size is Usable kwh RSM R 2 = 9 1.4.45.5.55 5 5.93 Battery kwh 535.5 FDR 644.6 WeightReductionkg RatedSpeedFactor RD.9/175.3 Ricardo plc 9 32

RD.9/175.3 Ricardo plc 9 33 Appendix A: Small Car Case 1 [ mi] Profile r Prediction Profiler FTP Range 79.43 Range HWFET 75.73133 - Time 4.8412 1 1 13 11 9 7 5 3 - Time 9.966395 Top Speed mph 1.17 45 mph Range 82.13254 mph Range 57.49835 1 1 1 Note: Battery size is Usable kwh RSM R 2 = 9 1.4.45.5.55 5 18.35 Battery kwh 7.27 532 FDR WeightReductionkg.5812 RatedSpeedFactor

RD.9/175.3 Ricardo plc 9 34 Appendix A: Small Car Case 2 [ mi] Profile r Prediction Profiler FTP Range 79.88444 Range HWFET 73.87733 - Time 4.993579 1 1 13 11 9 7 5 3 - Time.12485 Top Speed mph.5438 45 mph Range 89948 mph Range 54.42493 1 1 1 Note: Battery size is Usable kwh RSM R 2 = 9 1.4.45.5.55 5 16.53 Battery kwh 92.97 535.5 FDR 173.3 WeightReductionkg.5812 RatedSpeedFactor

RD.9/175.3 Ricardo plc 9 35 Appendix A: Small Car Case 3 [ mi] Profile r Prediction Profiler FTP Range.3113 Range HWFET 69.66615 - Time 4.811465 1 1 13 11 9 7 5 3 - Time.155 Top Speed mph.1815 45 mph Range 77.787 mph Range 49.12826 1 1 1 Note: Battery size is Usable kwh RSM R 2 = 9 1.4.45.5.55 5 13.99 Battery kwh.6 535.5 FDR 427.5 WeightReductionkg 219 RatedSpeedFactor

RD.9/175.3 Ricardo plc 9 36 Appendix A: Small Car Case 4 [ mi] Profile r Prediction Profiler FTP Range.24554 Range HWFET 67.4866 - Time 4.184 1 1 13 11 9 7 5 3 - Time 8.842494 Top Speed mph 692 45 mph Range 74.62429 mph Range 45.35 1 1 1 Note: Battery size is Usable kwh RSM R 2 = 9 1.4.45.5.55 5 12.42 Battery kwh 5.8 FDR 583.8 WeightReductionkg.5823 RatedSpeedFactor

Appendix A: Small SUV Case 1 [ mi] Profile r Prediction Profiler 1 Range FTP.1647 Range HWFET 35.31922 - Time 4.456241 - Time 9.922228 Top Speed mph 98975 Range 45 mph 39.75432 1 1 Range mph 24.25879 Note: Battery size is Usable kwh RSM R 2 = 9 1-1.4.45.5.55 5 11.24 Battery kwh 96.21 FDR 7 WeightReductionkg.4 RatedSpeedFactor RD.9/175.3 Ricardo plc 9 37

Appendix A: Small SUV Case 2 [ mi] Profile r Prediction Profiler 1 Range FTP 39.957 Range HWFET 34.43219 - Time 4.4365 - Time 9.998216 Top Speed mph.846 Range 45 mph 39.747 Range mph 23.316 1 1 Note: Battery size is Usable kwh RSM R 2 = 9 1-1.4.45.5.55 5.44 Battery kwh 84.2 FDR 359 WeightReductionkg.4 RatedSpeedFactor RD.9/175.3 Ricardo plc 9 38

Appendix A: Small SUV Case 3 [ mi] Profile r Prediction Profiler 1 Range FTP.586 Range HWFET 33.242 - Time 4.4311 - Time 9.9262 Top Speed mph 97.55348 Range 45 mph 38.83725 1 1 Range mph 21.96697 Note: Battery size is Usable kwh RSM R 2 = 9 1-1.4.45.5.55 5 9.3 Battery kwh 71.37 645.7 FDR 678 WeightReductionkg.4 RatedSpeedFactor RD.9/175.3 Ricardo plc 9 39

Appendix A: Small SUV Case 4 [ mi] Profiler Prediction Profiler 1 Range FTP.25211 Range HWFET 31.6736 - Time 4.5895 - Time 9.98529 Top Speed mph 1.398 Range 45 mph 37.34725 1 1 Range mph.539 Note: Battery size is Usable kwh RSM R 2 = 9 1-1.4.45.5.55 5 8.44 Battery kwh 1.3 FDR 899 WeightReductionkg.4786 RatedSpeedFactor RD.9/175.3 Ricardo plc 9

Appendix A: Small SUV Case 1 [ mi] Profile r Prediction Profiler 1 Range FTP 79.77395 Range HWFET 72.751 - Time 4.4976 - Time 9.988453 Top Speed mph 94564 Range 45 mph 81.95155 Range mph 51.23838 1 1 Note: Battery size is Usable kwh RSM R 2 = 9 1-1.4.45.5.55 5 24.6 Battery kwh.2 2 FDR WeightReductionkg.4 RatedSpeedFactor RD.9/175.3 Ricardo plc 9 41

Appendix A: Small SUV Case 2 [ mi] Profile r Prediction Profiler 1 Range FTP 79.81661 Range HWFET 69.83351 - Time 4.455183 - Time 9.9771 Top Speed mph.812 Range 45 mph 79.25614 Range mph 48.1467 1 1 Note: Battery size is Usable kwh RSM R 2 = 9 1-1.4.45.5.55 5 21.78 Battery kwh 89.1 2 FDR 255 WeightReductionkg.4 RatedSpeedFactor RD.9/175.3 Ricardo plc 9 42

RD.9/175.3 Ricardo plc 9 43 Appendix A: Small SUV Case 3 [ mi] Profile r Prediction Profiler 1 Range FTP.2289 Range HWFET 66.734 - Time 4.434153 - Time 9.947931 Top Speed mph 94.77765 Range 45 mph 76.96551 1 1 Range mph 44.41734 Note: Battery size is Usable kwh RSM R 2 = 9 1-1.4.45.5.55 5 19.9 Battery kwh 74.34 6.2 FDR 591 WeightReductionkg.4 RatedSpeedFactor

Appendix A: Small SUV Case 4 [ mi] Profile r Prediction Profiler 1 Range FTP.11264 Range HWFET 63.68141 - Time 4.387744 - Time 9.766263 Top Speed mph 95.22 Range 45 mph 73.784 1 1 Range mph 41.49525 Note: Battery size is Usable kwh RSM R 2 = 9 1-1.4.45.5.55 5 17.36 Battery kwh 663 FDR 812 WeightReductionkg.4618 RatedSpeedFactor RD.9/175.3 Ricardo plc 9 44

RD.9/175.3 Ricardo plc 9 45 APPENDIX B ENERGY USAGE FTP vs. HWFET

RD.9/175.3 Ricardo plc 9 46 HWFET & FTP Energy Usage Small Car, FTP75, Case 1: 15 kg [Regen = 2%] 1265 kj Lower Rolling Resistance [over 1 FTP75 cycle] Small Car, FTP75, Case 4: 627 kg [Regen = 15.6%] Small Car, HWFET, Case 1: 15 kg [Regen = 5.3%] 11 kj Lower Rolling Resistance [over 1 HWFET cycle] Small Car, HWFET, Case 4: 627 kg [Regen = 2.8%]

RD.9/175.3 Ricardo plc 9 47 APPENDIX C Brake Regeneration Plot

RD.9/175.3 Ricardo plc 9 48 Small Car Brake Regen Example The EV motor and battery size allow for large brake regeneration capture. No safety control was implemented and a fixed threshold was used to separate regen braking from mechanical braking. brake Regen AMPS FTP-75 Note: Actual SOC range measured from.25