Networked Aquatic Microbial Observing System

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Presentation transcript:

Networked Aquatic Microbial Observing System Center for Embedded Networked Sensing Networked Aquatic Microbial Observing System Amit Dhariwal, Bin Zhang, Arvind Pereira, Carl Oberg, Beth Stauffer, Stefanie Moorthi, David Caron, Gaurav Sukhatme Robotic Embedded Systems Lab, University of Southern California – http://robotics.usc.edu/~namos Monitoring Aquatic Environments Locate, track and study the growth and migration patterns of cyano-bacteria and harmful algal blooms. Development of an autonomous network of heterogeneous sensors to sample and track changes in aquatic environments. Robotic Sensor Network Design Static network monitors the environment at low resolution and directs the robot boat for fine-grained sampling. Robot boat moves to the location of interest, collects data and samples for lab analysis. Sensor suite: thermistors (temperature), fluorometer (chlorophyll) , light intensity (PAR), humidity, rain, air pressure, wind speed, wind direction, pH, turbidity, salinity (conductivity). Emstar based ad-hoc wireless 802.11b based communication. Robotic Boat Static Buoy Node Autonomous sensor guided and/or network guided near-surface sampling system for field operation. Outfitted with basic sensor suite for pertinent environmental parameters - thermistor, fluorometer and water sampler. Autonomous navigation to GPS waypoints using on-board GPS and compass (PID based control). Real time boat location monitoring. Continuous real time data acquisition and logging of pertinent environmental parameters. Sensor suite: Array of thermistors (for temperature vs. depth profiling) and fluorometer (chlorophyll). Real time data visualization at the shore. Field Deployment at the James Reserve, Idyllwild, CA Collaborative Operation Network of 10 static nodes and 1 robotic boat Continuous real time data acquisition and in-network data processing Sensor-network directed robotic boat navigation and sampling Fig. Autonomous navigation between GPS way-points. Fig. Chlorophyll and temperature variation over the length of the lake and over the course of the day. UCLA – UCR – Caltech – USC – CSU – JPL – UC Merced