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Ibrahim ABDO Korkut Kaan TOKGOZ Atsushi SHIRANE Kenichi OKADA
This paper introduces several design techniques to improve the performance of CMOS frequency multipliers that operate at the sub-THz band without increasing the complexity and the power consumption of the circuit. The proposed techniques are applied to a device nonlinearity-based frequency tripler and to a push-push frequency doubler. By utilizing the fundamental and second harmonic feedback cancellation, the tripler achieves -2.9dBm output power with a simple single-ended circuit architecture reducing the required area and power consumption. The tripler operates at frequencies from 103GHz to 130GHz. The introduced modified push-push doubler provides 2.3dB conversion gain including the balun losses and it has good tolerance against balun mismatches. The output frequency of the doubler is from 118GHz to 124GHz. Both circuits were designed and fabricated using CMOS 65nm technology.
Chao LI Korkut Kaan TOKGOZ Ayuka OKUMURA Jim BARTELS Kazuhiro TODA Hiroaki MATSUSHIMA Takumi OHASHI Ken-ichi TAKEDA Hiroyuki ITO
Cow behavior monitoring is critical for understanding the current state of cow welfare and developing an effective planning strategy for pasture management, such as early detection of disease and estrus. One of the most powerful and cost-effective methods is a neural-network-based monitoring system that analyzes time series data from inertial sensors attached to cows. For this method, a significant challenge is to improve the quality and quantity of teaching data in the development of neural network models, which requires us to collect data that can cover various realistic conditions and assign labels to them. As a result, the cost of data collection is significantly high. This work proposes a data augmentation method to solve two major quality problems in the collection process of teaching data. One is the difficulty and randomicity of teaching data acquisition and the other is the sensor position changes during actual operation. The proposed method can computationally emulate different rotating states of the collar-type sensor device from the measured acceleration data. Furthermore, it generates data for actions that occur less frequently. The verification results showed significantly higher estimation performance with an average accuracy of over 98% for five main behaviors (feeding, walking, drinking, rumination, and resting) based on learning with long short-term memory (LSTM) network. Compared with the estimation performance without data augmentation, which was insufficient with a minimum of 60.48%, the recognition rate was improved by 2.52-37.05pt for various behaviors. In addition, comparison of different rotation intervals was investigated and a 30-degree increment was selected based on the accuracy performances analysis. In conclusion, the proposed data expansion method can improve the accuracy in cow behavior estimation by a neural network model. Moreover, it contributes to a significant reduction of the teaching data collection cost for machine learning and opens many opportunities for new research.
Korkut Kaan TOKGOZ Kimsrun LIM Seitarou KAWAI Nurul FAJRI Kenichi OKADA Akira MATSUZAWA
A multi-port device is characterized using measurement results of a two-port Vector Network Analyzer (VNA) with four different structures. The loads used as terminations are open-, or short-circuited transmission lines (TLs), which are characterized along with Ground-Signal-Ground pads based on L-2L de-embedding method. A new characterization method for a four-port device is introduced along with its theory. The method is validated using simulation and measurement results. The characterized four-port device is a Crossing Transmission Line (CTL), mainly used for over-pass or under-pass of RF signals. Four measurement results are used to characterize the CTL. The S-parameter response of the CTL is found. To compare the results, reconstructed responses compared with the measurements. Results show good agreement between the measured and modeled results from 1 GHz to 110 GHz.