The Industrial IoT Wireless Predictive Maintenance Sensor boasts up to a two-mile range using a wireless mesh networking architecture. The Predictive Maintenance Sensors are also known as Condition-based Based Monitoring Sensors. This IoT Preventative Monitoring Sensor consists of four of our most popular sensors in a single package to help control costs in most predictive maintenance applications. This sensor includes a vibration sensor, a thermocouple, a 100 Amp AC split core current sensor, and a machine body temperature sensor. This sensor is also C1D2 certified – Explosion proof.
Our IoT Wireless Predictive Maintenance Sensor samples vibration, acceleration, velocity, displacement, frequency, RMS current, and temperature data. After data collection, our sensor will send a fixed user-designed transmission interval over your wireless network. This device comes with a 1.25-meter, split core current sensor, a 2-meter vibration probe (which will also measure machine body temperature), and a 1-meter thermocouple probe that makes installation straightforward.
Characteristics include: Incorporating a 16-bit vibration and temperature sensor. This sensor will transmit highly accurate vibration data at user-defined intervals. These All-In-One Vibration Sensors can send computed and measured data thanks to in-built FFT and also RAW data for further processing on the user end. Using a 3-Axis Sensor as opposed to a 1-Axis (such as Piezo Sensors) users will achieve a much more accurate measurement count and user-friendly process.
Trusted in design and manufacturing of high quality industrial computing and IoT solutions for critical applications, from medical equipment to military system deployments.
Please fill out this form and we will contact you with information on the next scheduled webinar.
Please fill out this form and we will contact you with available times to schedule a CorGrid or CorMonitor demo.
Please fill out your information below to download. Thank you!
Please fill out your information below to download. Thank you!