A Multi-Channel Electromyography, Electrocardiography and Inertial Wireless Sensor Module Using Bluetooth Low-Energy
Abstract
:1. Introduction
2. Related Work
3. Hardware and System Description
3.1. Circuit Implementation
- Microcontroller with integrated wireless transceiver. Using the versatile nRF52840 System-on-Chip (SoC) by Nordic Semiconductor, programmed to use the BLE radio protocol stack, it offers the needed wireless connectivity together with wired (USB) connectivity for battery charging, simplified and secure pairing, etc.
- Biopotential analog front-end. Based on the Texas Instruments’ ADS1293 highly integrated front-end (FE), which includes configurable digital filters, instrumentation amplifiers and ADCs, augmented with an external biasing network suited for both EMG and ECG signal acquisition through either DC or AC-coupled electrodes.
- Inertial platform. Made with the ultra-low-power LSM6DSO digital accelerometer and gyroscope by ST Microelectronics, it features an always-on accelerometer used to wake up the system when motion is detected, and is used to stream 6-axes motion data when the system is operational.
- Power supply. It consists of a lithium-polymer battery charger and a bunch of linear and switching regulators to provide power to the different subsystems only when actually needed, and designed to maximize energy efficiency.
3.2. System Operational Modes
- OFF: This is the lowest power state, with the system completely disabled, meant to be used for long-term storage, with a current drain comparable or lower than the battery self-discharge rate. It is entered upon request from the host, or when a low-battery condition is detected. It can only be exited by attaching the device to the battery charger. In this state, the CPU and accelerometer are programmed in the power-down state for lowest current consumption. The EMG front-end is not powered at all.
- IDLE: This is entered after a period of inactivity, i.e., after advertising for a long time without any BLE central requesting a connection. In this state the accelerometer is kept active in an ultra-low-power state and a low () sampling rate. When it detects a change in the acceleration measured on any of its three axes (e.g., when the sensor is rotated around an axis not parallel to gravity, or it is slightly shaked), it resets the CPU and moves the system to the advertising state. The EMG front-end is not powered at all as in the OFF state.
- ADVERTISING: This state is entered after a wake-up from IDLE, a reset from OFF, or after the host disconnects the BLE link. In this state the accelerometer is kept as in IDLE to prevent the advertising from timing out if there is movement, as is the EMG front-end, still unpowered. The CPU is timed from an external LFXO to reduce power consumption with respect to the internal RC oscillator.
- CONNECTED: Entered when a BLE central establishes a connection. In this state the hosts can control most of the functions of the sensor. By default, only the battery monitor is enabled, the LSM6DSO is powered down, while the ADS1293, which has a relatively long start-up time due to the high-value biasing resistors, is powered on and kept in stand-by awaiting for the host to request data streaming. The CPU is still timed by the LFXO.
- STREAMING: Entered when the host enables notifications for a specific service. In this state the requested data source is enabled at the prescribed data rate, and the uncompressed data stream is sent over the BLE link. For accurate data timestamping, the high-frequency crystal oscillator (HFXO) is kept active at all times and not only during radio activity as is done in the previous two states. This results in a slightly higher current consumption but it is necessary to ensure proper data synchronization.
4. Data Communication and Processing
4.1. Protocol Description
4.2. Receiver-Side Processing
4.3. Clock Synchronization
5. Results
5.1. Frequency Response
5.2. Noise Floor
5.3. Latency and Synchronization
5.4. Current Consumption
5.5. Real-Life Example
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Mode | nRF52840 | ADS1293 | LSM6DSO |
---|---|---|---|
OFF | |||
IDLE | |||
ADVERTISING | - | ||
CONNECTED | - | ||
STREAMING (min) | - | ||
STREAMING (max) |
Stream | SUB # | SEQ | Bits | Content |
---|---|---|---|---|
electromiography | 0 | 0 | 0 ÷ 3 | ODR [from to , encoded as ] |
4 ÷ 5 | number of active EMG channels (1 ÷ 3) | |||
6 ÷ 7 | [reserved for future use] | |||
1 | 8 ÷ 10 | channel 1 negative lead number (1 ÷ 6) | ||
11 ÷ 13 | channel 1 positive lead number (1 ÷ 6) | |||
14 ÷ 15 | channel 1 test mode | |||
2 | 16 ÷ 18 | channel 2 negative lead number (1 ÷ 6) | ||
19 ÷ 21 | channel 2 positive lead number (1 ÷ 6) | |||
22 ÷ 23 | channel 2 test mode | |||
3 | 24 ÷ 26 | channel 3 negative lead number (1 ÷ 6) | ||
27 ÷ 29 | channel 3 positive lead number (1 ÷ 6) | |||
30 ÷ 31 | channel 3 test mode | |||
2 | 8 ÷ 11 | 0 ÷ 31 | sampling timestamp (encoded as 32 bit unsigned integer) | |
4 | 16 ÷ 19 | 0 ÷ 31 | transmit timestamp (encoded as 32 bit unsigned integer) | |
gyroscope | 0 | 0 | 0 ÷ 1 | accelerometer full-scale range [2 g, 4 g, 8 g, 16 g] |
2 ÷ 3 | gyroscope full-scale range [250 dps, 500 dps, 1000 dps, 2000 dps] | |||
4 ÷ 7 | ODR [from to , encoded as ] | |||
8 ÷ 31 | [reserved for future use] | |||
2 | 2 | 0 ÷ 31 | sampling timestamp (encoded as 32 bit unsigned integer) |
Type | (Hz) | (Bits) | (Bytes) | |||
---|---|---|---|---|---|---|
EMG | 1 | 3200 | 24 | 6 | 4 | 18 |
EMG | 2 | 1600 | 24 | 3 | 4 | 18 |
EMG | 3 | 800 | 24 | 2 | 3 | 18 |
ECG | 3 | 200 | 24 | 2 | 0.75 | 18 |
ACC | 3 | 104 | 16 | 2 | 0.39 | 12 |
ACC + GYRO | 6 | 104 | 16 | 1 | 0.78 | 12 |
ACC + GYRO | 6 | 208 | 16 | 1 | 1.56 | 12 |
ACC + GYRO | 6 | 416 | 16 | 1 | 3.12 | 12 |
Mode | Description | |
---|---|---|
OFF | all devices off | |
IDLE | accelerometer enabled for wake-up | |
ADVERTISING | bluetooth enabled ( advertising interval) | |
CONNECTED | all subsystems powered ( connection interval) | |
STREAMING | 3 EMG channels streaming at ( TX power) |
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Biagetti, G.; Crippa, P.; Falaschetti, L.; Turchetti, C. A Multi-Channel Electromyography, Electrocardiography and Inertial Wireless Sensor Module Using Bluetooth Low-Energy. Electronics 2020, 9, 934. https://doi.org/10.3390/electronics9060934
Biagetti G, Crippa P, Falaschetti L, Turchetti C. A Multi-Channel Electromyography, Electrocardiography and Inertial Wireless Sensor Module Using Bluetooth Low-Energy. Electronics. 2020; 9(6):934. https://doi.org/10.3390/electronics9060934
Chicago/Turabian StyleBiagetti, Giorgio, Paolo Crippa, Laura Falaschetti, and Claudio Turchetti. 2020. "A Multi-Channel Electromyography, Electrocardiography and Inertial Wireless Sensor Module Using Bluetooth Low-Energy" Electronics 9, no. 6: 934. https://doi.org/10.3390/electronics9060934
APA StyleBiagetti, G., Crippa, P., Falaschetti, L., & Turchetti, C. (2020). A Multi-Channel Electromyography, Electrocardiography and Inertial Wireless Sensor Module Using Bluetooth Low-Energy. Electronics, 9(6), 934. https://doi.org/10.3390/electronics9060934