| Image | Part Number | Description / PDF | Quantity | Rfq |
|---|---|---|---|---|
|
Sensirion |
EVAL KIT FOR SGP40 GAS SENSOR |
62 |
|
|
|
Sensirion |
FLOW METER KIT FOR SLI-2000 |
30 |
|
|
|
Sensirion |
EVAL KIT SENSOR FOR SHT40 |
27 |
|
|
|
Sensirion |
FLOW METER KIT FOR SLG-0150 |
7 |
|
|
|
Sensirion |
SCC30 EVALUATION KIT |
32 |
|
|
|
Sensirion |
FLOW METER KIT FOR SLI-0430 |
37 |
|
|
|
Sensirion |
EVAL KIT FOR SFA30 FORMALDEHYDE |
0 |
|
|
|
Sensirion |
EVAL KIT MASS FLOW METER SFM3200 |
49 |
|
|
|
Sensirion |
SHT35 SENSORS ON FLEX STRIP |
67 |
|
|
|
Sensirion |
SHTC3 SENSORS ON FLEX STRIP |
38 |
|
|
|
Sensirion |
EVAL KIT FOR SFM3XXX-AW/-D |
155 |
|
|
|
Sensirion |
SPS30 EVAL KIT |
390 |
|
|
|
Sensirion |
EVAL KIT MASS FLOW METER SFM3000 |
156 |
|
|
|
Sensirion |
EVALUATION KIT SDP800 SERIES |
49 |
|
|
|
Sensirion |
SHT31 SENSORS ON FLEX STRIP |
92 |
|
|
|
Sensirion |
STC31 EVAL KIT |
44 |
|
|
|
Sensirion |
FLOW METER KIT FOR SLS-1500 |
0 |
|
|
|
LIQUID FLOW PULSATION DAMPING KIT Sensirion |
DAMPING LIQUID FLOW EVAL KIT |
7 |
|
|
|
Sensirion |
EVAL BOARD TEMP AND HUMIDITY W/B |
397 |
|
|
|
Sensirion |
EVAL KIT MASS FLOW METER W/CBL |
6 |
|
Evaluation boards for sensors are specialized hardware platforms designed to test, validate, and develop sensor-based applications. These boards integrate sensor elements with processing units, communication interfaces, and power management modules. They play a critical role in accelerating product development cycles in industries such as IoT, industrial automation, healthcare, and consumer electronics by enabling rapid prototyping and performance characterization.
| Type | Functional Features | Application Examples |
|---|---|---|
| Temperature Sensor Boards | High-precision thermal sensing with digital/analog outputs | Climate control systems, medical devices |
| Accelerometer Boards | 3-axis motion detection with programmable sensitivity | Vibration monitoring, fitness trackers |
| Pressure Sensor Boards | Atmospheric/differential pressure measurement | Weather stations, automotive systems |
| Environmental Sensor Boards | Multi-parameter detection (humidity, gas, light) | Smart agriculture, air quality monitors |
| Image Sensor Boards | High-resolution optical sensing with ISP integration | Surveillance cameras, machine vision |
Typical evaluation boards consist of: - Sensor element (MEMS, CMOS, or discrete transducers) - Microcontroller/SoC with ADC/DAC interfaces - Communication modules (I2C, SPI, UART, BLE/Wi-Fi) - Power management ICs and voltage regulators - Debugging interfaces (JTAG, SWD) - Auxiliary components (LED indicators, potentiometers) The PCB layout optimizes signal integrity while minimizing electromagnetic interference.
| Parameter | Description | Importance |
|---|---|---|
| Measurement Range | Minimum/maximum detectable values | Determines application suitability |
| Accuracy | Error margin vs. reference values | Impacts system reliability |
| Sampling Rate | Data acquisition frequency | Defines dynamic response capability |
| Power Consumption | Operating current/voltage requirements | Affects battery life and thermal design |
| Interface Type | Communication protocol compatibility | Dictates system integration complexity |
| Manufacturer | Representative Product | Key Features |
|---|---|---|
| STMicroelectronics | STEVAL-MKI187V1 | 6-axis IMU with advanced calibration |
| Texas Instruments | BOOSTXL-ULTRASONIC | Ultrasonic sensing for distance measurement |
| Analog Devices | EVAL-ADICUP3029 | Low-power Cortex-M4F based platform |
| NXP Semiconductors | FRDM-FXS-MULTI-B | Multi-sensor fusion for IoT applications |
Key considerations include: - Match sensor specifications to target application requirements - Verify compatibility with existing development ecosystems - Evaluate power budget and form factor constraints - Consider available software support (drivers, SDKs) - Assess calibration and certification requirements Example: For a wearable health monitor, prioritize low-power accelerometers with medical-grade accuracy.
Emerging trends include: - Integration of AI accelerators for edge computing - Development of wireless sensor nodes with energy harvesting - Advancements in MEMS fabrication for higher sensitivity - Standardization of sensor fusion algorithms - Growth of open-source hardware ecosystems Market projections indicate a 12% CAGR through 2027 driven by IoT and Industry 4.0 adoption.