An Incremental Step Sensing MPPT BasedSI-SIDO Energy Harvester With>99% PeakMPPT Efficiency for an Input PowerRange of 30W to 33 mW

IEEE JOURNAL OF SOLID-STATE CIRCUITS(2023)

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摘要
An energy harvesting (EH) system with incremental step sensing (ISS) maximum power point tracking (MPPT)algorithm is presented in this work. The ISS-MPPT algorithmis generic for any discontinuous conduction mode (DCM) based converter independent of the type, topology, and control of the converter and converter parameters. The problem in implementing a successive approximation register (SAR) inspired algorithm for MPP hill climbing is rectified by our proposed adaptive step-size-based approach for fast-tracking. A resistor orcurrent-sensor less, time-based, input current sensing technique is proposed to generate a voltage inversely proportional to thein put current. The chip-prototype is fabricated in a standard180 nm CMOS technology occupying 1.17 mm(2)of silicon area. The fabricated chip is a single inductor-single input dual output boost converter (SI-SIDO) which caters to an input power range of 30 mu W to 33 mW and an input voltage range of 150 mV to 1.8 V. The proposed system is compatible with photo-voltaic(PV) and dc output (like thermal transducers, bio-fuel cells)-type sources achieving up to 99.5% MPPT efficiency. The chip achieves an MPPT efficiency of not less than 95% in the case of a dc input source with 300 mV to 0.8 V open circuit voltage(V-OC) and 25-500of input resistance (R-IN) in measurements. A peak converter efficiency of 88% is achieved with a quiescent power consumption of 1.8 mu W with the MPP module consuming440 nA of current.
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关键词
Maximum power point trackers, Sensors, Perturbation methods, Prediction algorithms, Tuning, Frequency conversion, Wireless sensor networks, Adaptive step size, boost converter, efficiency, energy harvesting (EH), hill-climbing, maximum power point tracking (MPPT), perturb and observe (P&O), single input dual output boost converter (SIDO), time-based, wireless sensor nodes (WSN)
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