Exercise support device, exercise support method and storage medium
US-2016081612-A1 · Mar 24, 2016 · US
US12569740B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-12569740-B2 |
| Application number | US-202118036812-A |
| Country | US |
| Kind code | B2 |
| Filing date | Nov 13, 2021 |
| Priority date | Nov 16, 2020 |
| Publication date | Mar 10, 2026 |
| Grant date | Mar 10, 2026 |
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A system (10) and a method for determining a maximum miming speed (MRS) of a runner include a memory unit (32) (MU) with miming determinants (30) (RDs) of the runner and venue stored therein. A processor unit (22) (PU), connected to the memory unit (32) (MU), runs a predictive algorithm (24) (PA) using the running 5 determinants (30) (RDs) to determine the maximum running speed of the runner by zeroing a linear momentum balance and an angular momentum balance of the runner, typically over at least a half-running cycle (HRC). An output unit (34) (OU), connected to the processor unit (22) (PU), receives the determined maximum running speed therefrom. The zeroing also allows the determination of a critical 10 ground impulse ratio (Rcr) of the runner.
Opening claim text (preview).
The invention claimed is: 1 . A system for predicting a maximum running speed (MRS) of a runner as a first predictive outcome (PO), said system comprising: a memory unit (MU) having stored therein a plurality of running determinants (RDs) of the runner and venue; a processor unit (PU) connecting to the memory unit (MU), the processor unit (PU) running a predictive algorithm (PA) using the plurality of running determinants (RDs) to predict the maximum running speed of the runner by zeroing a linear momentum balance and an angular momentum balance of the runner, along with an estimated value of at least one of the plurality of running determinants and an additional running determinant; and an output unit (OU) connecting to the processor unit (PU) to receive the predicted maximum running speed therefrom, along with the estimated value and at least one corresponding feedback action for the runner to implement to get closer to the estimated value and therefore to the predicted maximum running speed. 2 . The system of claim 1 , wherein the zeroing of the linear momentum balance and the angular momentum balance allows the processor unit (PU) to determine a critical ground impulse ratio (R cr ) of the runner as a second predictive outcome (PO) sent to the output unit (OU). 3 . The system of claim 1 , wherein at least one of the first and second predictive outcomes (PO) is stored in a performance result database (PRD). 4 . The system of claim 1 , wherein the plurality of running determinants (RDs) and the additional running determinant are stored in a parameter database (PD) including environmental characteristics (ECs) and runner's characteristics (RCs) and a control inputs database (CID) including runner's control inputs (RCIs). 5 . The system of claim 4 , wherein the environmental characteristics (ECs) include a gravitational acceleration (g), a wind speed (v w ), an air density (ρ), and track (Z trk ) and shoe (Z shoe ) mechanical impedances, wherein the runner's characteristics (RCs) include a body mass (m) of the runner, an effective drag factor (α), an effective drag force height (y e ), and body segments' lengths, mass, inertia, and center of mass locations of the runner, and wherein the runner's control inputs (RCIs) include one of a contact time (t c ) value and a takeoff time period (τ 2 ) value, an aerial time (t a ) value, a landing time period (τ 1 ) value, and a center of mass speed ratio (β 0 ) value. 6 . The system of claim 1 , further comprising: a ground instrumentation unit (GIU) connecting to the processor unit (PU) to capture motion data from the runner while running at constant speed; wherein the processor unit (PU) receives the captured motion data to determine real-time values of a portion of the plurality of running determinants (RDs) and the additional running determinant and provide therewith real-time values of the predictive outcomes (PO). 7 . The system of claim 6 , wherein the portion of the plurality of running determinants (RDs) and the additional running determinant includes at least one of the effective drag factor (α), the effective drag force height (y e ), one of the contact time (t c ) value and the takeoff time period (τ 2 ) value, the aerial time (t a ) value, the landing time period (τ 1 ) value, and the center of mass speed ratio (β 0 ) value. 8 . The system of claim 6 , further comprising: a system identification unit (SIU) connecting to the processor unit (PU) to receive the predictive outcomes (PO) therefrom, the system identification unit (SIU) estimating at least one of the plurality of running determinants (RDs) and sending the estimated one of the plurality of running determinants (RDs) to the memory unit (MU) connected to the system identification unit (SIU). 9 . The system of claim 3 , wherein at least one of the plurality of running determinants (RDs) and the additional running determinant is determined from a plurality of accumulated tabled values from other runners and stored in the performance result database (PRD). 10 . The system of claim 3 , further comprising: an optimization algorithm (OA) connecting to the performance result database (PRD) to receive data therefrom to determine optimized values of at least one of the plurality of running determinants (RDs) and the additional running determinant to improve the predictive outcomes (PO) and sending the optimized values to the memory unit (MU) connected to the optimization algorithm (OA). 11 . The system of claim 10 , wherein the plurality of running determinants (RDs) and the additional running determinant are stored in a parameter database (PD) including environmental characteristics (ECs) and runner's characteristics (RCs) and a control inputs database (CID) including runner's control inputs (RCIs); and wherein the optimization algorithm (OA) determines optimal values of the runner's control inputs (RCIs) to achieve a predetermined value of at least one of the first and second predictive outcomes (PO) using the environmental characteristics (ECs) and runner's characteristics (RCs). 12 . The system of claim 11 , wherein the optimization algorithm (OA) determines optimal values of the environmental characteristics (ECs), runner's characteristics (RCs), and the runner's control inputs (RCIs) to achieve an ultimate predetermined value of at least one of the first and second predictive outcomes (PO). 13 . The system of claim 1 , wherein the zeroing of the linear momentum balance and the angular momentum balance is performed over at least a half-running cycle (HRC). 14 . A method for predicting a maximum running speed (MRS) of a runner as a first predictive outcome (PO), said method comprising the steps of: getting a plurality of running determinants (RDs) of the runner and venue stored in a memory unit (MU); running a predictive algorithm (PA) with a processor unit (PU) connected to the memory unit (MU) using the plurality of running determinants (RDs) to predict the maximum running speed of the runner by zeroing a linear momentum balance and an angular momentum balance of the runner, along with an estimated value of at least one of the plurality of running determinants and an additional running determinant; and providing the predicted maximum running speed to an output unit (OU) connected to the processor unit (PU), along with the estimated value and at least one corresponding feedback action for the runner to implement to get closer to the estimated value and therefore to the predicted maximum running speed. 15 . The method of claim 14 , wherein the zeroing of the linear momentum balance and the angular momentum balance allows determining a critical ground impulse ratio (R cr ) of the runner as a second predictive outcome (PO), and wherein the step of providing comprises providing the second predictive outcome (PO) to the output unit (OU). 16 . The method of claim 14 , further comprising the step of: storing the at least one of the first and second predictive outcomes (PO) in a performance result database (PRD). 17 . The method of claim 14 , wherein the plurality of running determinants (RDs) and the additional running determinant are stored in a parameter database (PD) including environmental characteristics (ECs) and runner's characteristics (RCs) and a control inputs database (CID) including runner's control inputs (RCIs); and wherein the environmental characteristics (ECs) include a gravitational acceleration (g), a wind speed (v w ), an air density (ρ), and track (Z trk ) and shoe (Z shoe ) mechanical impedances, wherein the runner's char
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