Monitoring Walker Assistive Devices: A Novel Approach Based on Load Cells and Optical Distance Measurements †
Abstract
:1. Introduction
2. Usage Metrics
2.1. Force Balance
2.2. Motor Coordination
- T01 is enabled when F1 + F2 + F3 + F4 < WEIGHT_TH (threshold of minimum weight). This transition occurs when the total force measured by the load cells falls below the walker weight; in other words, when the walker is lifted in the air.
- T12 is enabled if F1 + F2 + F3 + F4 > WEIGHT_TH AND d > TRAVEL_TH (threshold of minimum distance travelled forward). This transaction occurs when the walker touches the floor after traveling a distance greater than the minimum.
- T23 is enabled if COFx > RIGHT_TH or COFx < LEFT_TH depending on which foot is injured (left or right, respectively). This transaction occurs when the user steps forward with the injured foot and applies maximum force on the opposite side. The injured foot shall always be the first one to move. The type of disability must be defined in advance because it determines the threshold value.
- T34 is enabled if COFx < RIGHT_TH or COFx > LEFT_TH depending on which foot is injured (left or right, respectively). This transaction occurs when the user alleviates the force previously applied to the walker; in other words, when COFx returns to zero.
- T45 is enabled if COFx < LEFT_TH or COFx > RIGHT_TH depending on which foot is injured (left or right, respectively). This transaction occurs when the user steps forward with the healthy foot and applies maximum force on the opposite side. The healthy foot shall always be the last one to move.
- T50 is enabled if COFx > LEFT_TH or COFx < RIGHT_TH depending on which foot is injured (left or right, respectively). This transaction occurs when the user alleviates the force previously applied to the walker; in other words, when COFx returns to zero.
3. Measurement System
3.1. Force Sensors
3.2. LIDAR
3.3. Signal Conditioning
3.4. Data Acquisition
3.5. Data Processing
- Computation of COFx and COFy by solving Equations (1) and (2).
- Computation of the first risk indicator (I1) by solving Equations (3) and (4).
- Detection of “bad” steps (B) by running the state machine represented in Figure 2.
- Computation of the second risk indicator (I2) by solving Equation (5).
- Login: Ask for information about the user including its weight (needed to compute Equation (4)).
- Connect: Establish a Bluetooth link with the smart walker.
- Calibrate Sensors: Determine experimentally the offset error of the load cells and the walker weight (also needed for Equation (4)).
- Stream Data: Open a sub-window where the physiotherapist can monitor online the usage of the walker.
- Disconnect: Close the Bluetooth link with the smart walker.
3.5.1. Calibrate Sensors
3.5.2. Stream Data
- Balance (panel A): The COF is computed and the result is presented as a cross moving over a XY graph. When the user loads his left side the cross moves toward negative values of X; when he loads his right side the cross moves toward positive values of X. The same applies for the front/back direction over the Y axis, much like a joystick. A vertical slider shows the instantaneous value of the I1 indicator.
- Coordination (panel B): The state machine is executed and the current gait phase is identified. A set of six LEDs are turned on sequentially as the state machine moves forward the next phase. If the user passes through all the phases successfully, all the LEDs end up lighted and the step is marked as “good”. If the user violates any phase, the machine is reset to the first stage (GP0) and the step is marked as “bad”. The number of “good” and “bad” steps is registered. A vertical slider shows the instantaneous value of the I2 indicator.
4. Experimental Results
4.1. COF Location
4.2. Computation of I1 (Assessment of Unbalance)
- Gait phase 0 was omitted because it is a waiting state.
- During gait phase 1 the walker is lifted in the air and travels about 30 cm (from d ≈ 30 cm to d ≈ 60 cm).
- Gait phase 2 is a waiting state that ends when the user starts moving the injured foot (making COFx cross LEFT_TH).
- During gait phase 3 the user transfers part of his weight to the left to compensate the lack of support on the injured foot [31]. While the injured foot moves forward, the distance returns to the base value (around 30 cm) and COFx returns to the origin, thus making the machine enter in stage 4.
- Gait phase 4 is another waiting state that ends when the user moves the healthy foot (making COFx cross RIGHT_TH).
- During gait phase 5 the user transfers part of his weight to the right. The load applied during phase 5 is lower than that applied on phase 3 because the healthy foot moves more easily than the injured foot. The step ends when both feet stay side-by-side, making COFx return to the origin and restart the state machine.
4.3. Computation of I2 (Assessment of Motor Incoordination)
4.4. COF Trajectories
4.5. LIDAR Measurements
5. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Viegas, V.; Dias Pereira, J.M.; Postolache, O.; Girão, P.S. Monitoring Walker Assistive Devices: A Novel Approach Based on Load Cells and Optical Distance Measurements. Sensors 2018, 18, 540. https://doi.org/10.3390/s18020540
Viegas V, Dias Pereira JM, Postolache O, Girão PS. Monitoring Walker Assistive Devices: A Novel Approach Based on Load Cells and Optical Distance Measurements. Sensors. 2018; 18(2):540. https://doi.org/10.3390/s18020540
Chicago/Turabian StyleViegas, Vítor, J. M. Dias Pereira, Octavian Postolache, and Pedro Silva Girão. 2018. "Monitoring Walker Assistive Devices: A Novel Approach Based on Load Cells and Optical Distance Measurements" Sensors 18, no. 2: 540. https://doi.org/10.3390/s18020540