Showing papers presented at "Mediterranean Conference on Control and Automation in 2017"
03 Jul 2017
TL;DR: A survey of recent research works on MRS is presented and a number of seminal review works that have proposed specific taxonomies in classifying fundamental concepts, such as coordination, architecture and communication, in the field of MRS are compiles.
Abstract: Literature reviews on Multi-Robot Systems (MRS) typically focus on fundamental technical aspects, like coordination and communication, that need to be considered in order to coordinate a team of robots to perform a given task effectively and efficiently. Other reviews only consider works that aim to address a specific problem or one particular application of MRS. In contrast, this paper presents a survey of recent research works on MRS and categorises them according to their application domain. Furthermore, this paper compiles a number of seminal review works that have proposed specific taxonomies in classifying fundamental concepts, such as coordination, architecture and communication, in the field of MRS.
30 citations
03 Jul 2017
TL;DR: In this article, the authors propose a nonlinear model predictive control (NMPC) scheme that guarantees the navigation of the object to a desired pose in a bounded workspace with obstacles, while complying with certain input saturations of the agents.
Abstract: This paper addresses the problem of cooperative transportation of an object rigidly grasped by N robotic agents. In particular, we propose a Nonlinear Model Predictive Control (NMPC) scheme that guarantees the navigation of the object to a desired pose in a bounded workspace with obstacles, while complying with certain input saturations of the agents. Moreover, the proposed methodology ensures that the agents do not collide with each other or with the workspace obstacles as well as that they do not pass through singular configurations. The feasibility and convergence analysis of the NMPC are explicitly provided. Finally, simulation results illustrate the validity and efficiency of the proposed method.
24 citations
03 Jul 2017
TL;DR: Simulation results confirm the effectiveness of the approach and the potential relevance of using energy storage systems in support of primary frequency regulation services.
Abstract: In this paper a power system protection scheme based on energy storage system placement against closed-loop dynamic load altering attacks is proposed. The protection design consists in formulating a non-convex optimization problem, subject to a Lyapunov stability constraint and solved using a two-step iterative procedure. Simulation results confirm the effectiveness of the approach and the potential relevance of using energy storage systems in support of primary frequency regulation services.
18 citations
01 Jul 2017
TL;DR: This paper extends some previous work on trajectory generation for UAV using differential flatness in combination with B-splines parametrization to generate feasible flat trajectories for nonlinear UAV dynamics while ensuring continuous constraint validation.
Abstract: This paper extends some previous work on trajectory generation for UAV (Unmanned Aerial Vehicles) using differential flatness in combination with B-splines parametrization. The originality of this work resides in the geometrical interpretations of the B-splines properties and their use in generating feasible flat trajectories for nonlinear UAV dynamics while ensuring continuous constraint validation. Of particular interest (and difficulty) are constraints involving system inputs since often the mapping between the input and the flat output space is strongly nonlinear. The tools used and the results obtained are exemplified over a particular UAV dynamical system and can be generalized to any nonlinear system admitting a flat description.
17 citations
03 Jul 2017
TL;DR: The proposed approach is based on switched interval observers which provide guaranteed lower and upper bounds allowing to evaluate the set of admissible values of the real state vector and is applied to robust estimation of vehicle lateral dynamics.
Abstract: This paper deals with the problem of robust state estimation for switched LPV continuous-time systems with measurable and unmeasurable scheduling parameters. The switching law is assumed to be uncontrollable but online available, while the unmeasurable varying parameters are assumed to be bounded with a priori known bounds. The proposed approach is based on switched interval observers which provide guaranteed lower and upper bounds allowing to evaluate the set of admissible values of the real state vector. The stability and positivity conditions of the switched interval error are expressed in terms of linear matrix inequalities (LMIs), which have been established using multiple quadratic ISS-Lyapunov functions (MQLF) and average dwell-time concept. In order to enhance estimation accuracy and robustness an explicit bound of the interval error is guaranteed. The proposed approach is applied to robust estimation of vehicle lateral dynamics. Tests are conducted on experimental data in order to prove the effectiveness of the proposed switched interval observer.
15 citations
01 Jul 2017
TL;DR: The aim of this article is to present an example of a novel cloud computing infrastructure for big data analytics in the Process Control Industry, carried in close relationship with the process industry and pave a way for a generalized application of the cloud based approaches, towards the future of Industry 4.0.
Abstract: The aim of this article is to present an example of a novel cloud computing infrastructure for big data analytics in the Process Control Industry. Latest innovations in the field of Process Analyzer Techniques (PAT), big data and wireless technologies have created a new environment in which almost all stages of the industrial process can be recorded and utilized, not only for safety, but also for real time optimization. Based on analysis of historical sensor data, machine learning based optimization models can be developed and deployed in real time closed control loops. However, still the local implementation of those systems requires a huge investment in hardware and software, as a direct result of the big data nature of sensors data being recorded continuously. The current technological advancements in cloud computing for big data processing, open new opportunities for the industry, while acting as an enabler for a significant reduction in costs, making the technology available to plants of all sizes. The main contribution of this article stems from the presentation for a fist time ever of a pilot cloud based architecture for the application of a data driven modeling and optimal control configuration for the field of Process Control. As it will be presented, these developments have been carried in close relationship with the process industry and pave a way for a generalized application of the cloud based approaches, towards the future of Industry 4.0.
14 citations
01 Jul 2017
TL;DR: This paper suggests data-driven Model-Free Control algorithms based on the combination of Takagi-Sugeno fuzzy (TSF) and intelligent proportional-integral (iPI) controllers, which are designed to control Single Input-Single Output (SISO) control structures for azimuth and pitch position control of a nonlinear twin rotor aerodynamic system (TRAS).
Abstract: This paper suggests data-driven Model-Free Control (MFC) algorithms based on the combination of Takagi-Sugeno fuzzy (TSF) and intelligent proportional-integral (iPI) controllers. The new MFC algorithms are referred to as mixed TSF-iPI controllers, which are designed to control Single Input-Single Output (SISO) control structures for azimuth and pitch position control of a nonlinear twin rotor aerodynamic system (TRAS). The mixed TSF-iPI controllers are designed by fuzzifying the proportional-derivative term in the iPI controller structure. The performance of the SISO control structures with mixed TSF-iPI controllers and iPI controllers is compared by means of real-time experiments conducted on a TRAS laboratory equipment using controllers tuned in terms of a metaheuristic Gravitational Search Algorithm optimizer.
13 citations
03 Jul 2017
TL;DR: This paper presents a novel two-stage regularized moving-horizon algorithm for PieceWise Affine (PWA) regression, using linear multi-category discrimination techniques to compute a polyhedral partition of the regressor space based on the estimated sequence of active modes.
Abstract: This paper presents a novel two-stage regularized moving-horizon algorithm for PieceWise Affine (PWA) regression. At the first stage, the training samples are processed iteratively, and a Mixed-Integer Quadratic-Programming (MIQP) problem is solved to find the sequence of active modes and the model parameters which best match the training data, within a relatively short time window in the past. According to a moving-horizon strategy, only the last element of the optimal sequence of active modes is kept, and the next sample is processed by shifting forward the estimation horizon. A regularization term on the model parameters is included in the cost of the formulated MIQP problem, to partly take into account also the past training data outside the considered time horizon. At the second stage, linear multi-category discrimination techniques are used to compute a polyhedral partition of the regressor space based on the estimated sequence of active modes.
12 citations
03 Jul 2017
TL;DR: This work proposes a hybrid method to improve convergence to the path, prevent cutting corner and overshoot from the desired path, and proposes a geometric model based lateral control system for a ground vehicle.
Abstract: This paper proposes a geometric model based lateral control system for a ground vehicle. Lateral control algorithm takes the advantages of two different path tracking methods at different path geometries. Two of the well-known geometric path tracking methods, namely Pure-Pursuit method and Stanley method, are combined with a simple and easy to implement approach. Pure-Pursuit method is very good at low speeds. However, as speed increases cutting corner behavior occurs and vehicle tends to converge to path relatively slow. In contrast, Stanley method convergence to the road is very fast and there is no cutting corner behavior. However since there is no look ahead behavior in Stanley method, it tends to overshoot from the desired path for sharp turns. In this work we propose a hybrid method to improve convergence to the path, prevent cutting corner and overshoot from the desired path.
12 citations
01 Jul 2017
TL;DR: The presented investigation acts as a preliminary study to the goal of incorporating the resulting optimized negative pressure-based actuation method in a wall-climbing robot for inspection of aircraft fuselages.
Abstract: In this article, the potential of utilizing an Electric Ducted Fan (EDF) as an adhesion actuator is investigated in detail, where an experimental setup is implemented for evaluating the EDF's ability to adhere to a test surface through negative pressure generation. Different design variables and modifications to the original EDF structure are tested, while their impact on the adhesion efficiency is experimentally evaluated. The presented investigation acts as a preliminary study to the goal of incorporating the resulting optimized negative pressure-based actuation method in a wall-climbing robot for inspection of aircraft fuselages.
12 citations
20 Jul 2017
TL;DR: Tuning criteria is derived such that zero steady state frequency deviation and power sharing is achieved even in the presence of clock drifts, if not considered in the tuning procedure.
Abstract: Secondary frequency control, i.e., the task of restoring the network frequency to its nominal value following a disturbance, is an important control objective in microgrids. In the present paper, we compare distributed secondary control strategies with regard to their behaviour under the explicit consideration of clock drifts. In particular we show that, if not considered in the tuning procedure, the presence of clock drifts may impair an accurate frequency restoration and power sharing. As a consequence, we derive tuning criteria such that zero steady state frequency deviation and power sharing is achieved even in the presence of clock drifts. Furthermore, the effects of clock drifts of the individual inverters on the different control strategies are discussed analytically and in a numerical case study.
01 Jul 2017
TL;DR: A distributed strategy for load balancing in a smart grid, modeling demand and supply as a networked dynamical system, is presented, which is proven to converge to a Wardrop equilibrium.
Abstract: This paper presents a distributed strategy for load balancing in a smart grid, modeling demand and supply as a networked dynamical system. The algorithm, which is characterized by point-to-point communications among agents implemented at the level of local energy management systems, is proven to converge to a Wardrop equilibrium. Numerical simulations of realistic scenarios are reported to show the effectiveness of the proposed approach.
01 Jul 2017
TL;DR: An effort towards the improvement of FCMs response is made, implementing for first time a new equation for the calculation of concept values and replacing the sigmoid function with Anti Windup control method.
Abstract: Effective decision making is the fundamental factor for the appropriate operation of any system. Several methods have been developed in recent years, and Fuzzy Cognitive Maps (FCMs) is one of them. Basics of FCMs are briefly presented. They have been used in a variety of applications with a very good degree of success. All these years some of their drawbacks have been detected and discussed by several researchers, who are searching for ways to improve FCMs performance and broaden their implementation area. An effort towards the improvement of FCMs response is made, implementing for first time a new equation for the calculation of concept values and replacing the sigmoid function with Anti Windup control method. Results are presented and discussed, and further thoughts leading towards new research directions are presented.
01 Jul 2017
TL;DR: In the paper the simple adaptive control approach is employed to designing the adaptive controllers of quadrotor angular motion based on the Implicit Reference Model (IRM) design technique, and the “shunting method” (parallel feedforward compensation) is used to cope with the unmodelled plant dynamics.
Abstract: In the paper the simple adaptive control approach is employed to designing the adaptive controllers of quadrotor angular motion. The adaptive controllers are synthesized based on the Implicit Reference Model (IRM) design technique. The “shunting method” (parallel feedforward compensation) is used to cope with the unmodelled plant dynamics. Analytical justification of system stability is made by employing the Passification method. Quality of the closed-loop IRM adaptive control system is studied and compared with that of the proportionalderivative (PD) non-adaptive control system experimentally on two degrees of freedom (2DOF) quadrotor testbed and in-flight tests of the QuadRoy quadrotor for nominal and parametrically perturbed cases.
01 Jul 2017
TL;DR: An algorithm to reduce the LPV-MPC computational complexity for a particular class of linear systems is proposed by exploiting a coordinate transformation, and the QP reconstruction can be avoided.
Abstract: Nowadays, Linear Parameter Varying (LPV) Model Predictive Control (MPC) represents a consolidated approach to optimally regulate multivariable nonlinear systems imposing constraints on inputs and outputs. The crucial drawback, in particular in embedded LPV-MPC, is represented by the required computational effort. The Quadratic Programming (QP) problem solved by MPC changes at each iteration, and its reconstruction increases drastically the time required to compute the control law. This paper proposes an algorithm to reduce the LPV-MPC computational complexity for a particular class of linear systems. By exploiting a coordinate transformation, the QP reconstruction can be avoided. The effectiveness of the novel method is shown on a benchmark set of random MPC problems, as well as on a real-world case study regarding the control of an heat exchanger cell.
01 Jul 2017
TL;DR: This study investigates a real-time optimization strategy for micro-algae continuous processes to determine the optimal dilution rate maximizing the biomass productivity on the basis of the on-line measurement of biomass concentration and minimum prior process knowledge.
Abstract: This study investigates a real-time optimization strategy for micro-algae continuous processes. The objective is to determine the optimal dilution rate maximizing the biomass productivity on the basis of the on-line measurement of biomass concentration and minimum prior process knowledge. Two different micro-algae strains (with different growth rates) are considered in this study: Dunaliela tertiolecta and Isochyris galbana. The extremum seeking control shows good performances in both cases. Practical tuning guidelines can be derived based on the strain growth dynamics.
01 Jul 2017
TL;DR: Simple LMI-based upper bounds on deviations are presented, and the same-flavor stabilizing feedback design procedure aimed at minimizing the peak is discussed, and lower bounds are proposed for specific initial conditions.
Abstract: It is well known that input-free stable linear systems with nonzero initial conditions may experience large deviations of the trajectory from the origin prior to converging to zero. Analysis of the transients of discrete-time systems is the subject of this paper. Simple LMI-based upper bounds on deviations are presented, and the same-flavor stabilizing feedback design procedure aimed at minimizing the peak is discussed. For companion-form systems, lower bounds are proposed for specific initial conditions; peaking effects for the norms of powers of Schur stable matrices are also analyzed.
01 Jul 2017
TL;DR: The proposed definition and control scheme is validated through the simulation of a rectilinear plant and it is shown that a control input is designed for an uncertain stochastic system with partial state information such that stoChastic discrete higher-order sliding mode takes place.
Abstract: This paper defines the stochastic discrete higherorder sliding mode. A control input is designed for an uncertain stochastic system with partial state information such that stochastic discrete higher-order sliding mode takes place. The proposed definition and control scheme is validated through the simulation of a rectilinear plant.
01 Jul 2017
TL;DR: This paper compares two control techniques for a DJI F450 quadcopter which is controlled and stabilized by a non-rooted onboard Android smartphone, without the aid of an external IMU, and introduces a LQI controller which is capable of satisfactorily tracking a reference command in the presence of errors, noise, and model uncertainties.
Abstract: In this paper, we compare two control techniques for a DJI F450 quadcopter which is controlled and stabilized by a non-rooted onboard Android smartphone, without the aid of an external IMU. Specifically, we compare an advanced modelfree PID and LQI controller. Since Android is not a realtime system, the control commands and sensor measurements are subject to significant latencies, and hence the PID controller is modified to account for non-trivial measurement asynchronicities. We also show that some features can be added to the widely used baseline PID to obtain better performance in the presence of latencies and noise. Finally, we introduce a LQI controller which is capable of satisfactorily tracking a reference command in the presence of errors, noise, and model uncertainties, and compare the results to the PID controller.
01 Jul 2017
TL;DR: This paper offers a new approach to learning discrete models for human-robot interaction (HRI) from small data, and adopts a Markov decision process (MDP) as such a model, and selects the transition probabilities through an empirical approximation procedure called smoothing.
Abstract: This paper offers a new approach to learning discrete models for human-robot interaction (HRI) from small data. In the motivating application, HRI is an integral part of a pediatric rehabilitation paradigm that involves a play-based, social environment aiming at improving mobility for infants with mobility impairments. Designing interfaces in this setting is challenging, because in order to harness, and eventually automate, the social interaction between children and robots, a behavioral model capturing the causality between robot actions and child reactions is needed. The paper adopts a Markov decision process (MDP) as such a model, and selects the transition probabilities through an empirical approximation procedure called smoothing. Smoothing has been successfully applied in natural language processing (NLP) and identification where, similarly to the current paradigm, learning from small data sets is crucial. The goal of this paper is two-fold: (i) to describe our application of HRI, and (ii) to provide evidence that supports the application of smoothing for small data sets.
01 Jul 2017
TL;DR: Experimental applied study on advanced quadcopter control using a special setup to conduct a series of experiments of roll and pitch motion control with robust output controllers.
Abstract: This paper describes an experimental applied study on advanced quadcopter control. A special setup is used to conduct a series of experiments of roll and pitch motion control. Three robust output controllers are verified. One of the controllers is the consecutive compensator, the remaining two are its modifications aimed to increase precision and reduce overshoot. Experiment specifications and comparative analysis of resultant performance of transient responses are reported in this paper.
01 Jul 2017
TL;DR: The new parameterization approach based on applying delay operators to a measurable signal is proposed and the result is the first order linear regression model with one parameter, which depends on the signal frequency.
Abstract: This paper is devoted to frequency estimation of a pure sinusoidal signal. The new parameterization approach based on applying delay operators to a measurable signal is proposed. The result is the first order linear regression model with one parameter, which depends on the signal frequency. The estimation algorithm is basing on standard gradient approach. It is shown that the frequency estimation error converges to zero exponentially fast. The described method does not require measuring or calculating derivatives of the input signal and uses only one integrator. The efficiency of the proposed approach is demonstrated through the set of numerical simulations.
01 Jul 2017
TL;DR: An optimal procedure for controlled electricity black start for electricity distribution grids in reaction to adverse events or malicious cyber attacks resulting in the interruption of the main power supply from transmission network is presented.
Abstract: This paper presents an optimal procedure for controlled electricity black start for electricity distribution grids in reaction to adverse events or malicious cyber attacks resulting in the interruption of the main power supply from transmission network. The islanded operation is supposed to be guaranteed by an electric energy storage system, which covers the network imbalance between demand and supply from distributed generation during the sequential reconnection of medium voltage branches. The objective is to restore the service to the consumers while avoiding violation of technical constraints in terms of storage power flow and battery capacity. The discussion of simulation results assesses the effectiveness of the proposed approach in the context of a simplified network model and gives rise to relevant remarks and requirements for further developments.
01 Jul 2017
TL;DR: A solution based on computer vision to detect solar panels in images based on the definition of a feature vector that characterizes portions of images that can be acquired with a standard camera and with no lighting restrictions is proposed.
Abstract: This paper proposes a solution based on computer vision to detect solar panels in images. It is based on the definition of a feature vector that characterizes portions of images that can be acquired with a standard camera and with no lighting restrictions. The proposal has been applied to a set of images taken in an operating photovoltaic plant and the results obtained demonstrate its validity and robustness. These results are meant to be used in later stages of a procedure for the optimization of energy efficiency.
01 Jul 2017
TL;DR: In this article, a new structure of FCOC with the form PIx+iyD is presented, in which x and y are the real and imaginary parts of the integral complex order, respectively.
Abstract: This paper deals with Fractional Complex Order Controller FCOC tuning. The paper presents new structure of FCOC with the form PIx+iyD, in which x and y are the real and imaginary parts of the integral complex order, respectively. With the controller's five parameters, we can fulfil five design requirements. Design specifications are set to ensure robustness toward gain variations, noise on system output and disturbance. A tuning method for the Controller is presented to accomplish design requirements. The proposed design method is investigated with a Second Order Plus Time Delay resonant system. Frequency and time domain analysis are presented in this manuscript.
01 Jul 2017
TL;DR: A detailed analysis of a PI tank level control is performed with respect to both load disturbance attenuation and set-point change, providing guidelines for achievable accuracy and controller settings.
Abstract: A detailed analysis of a PI tank level control is performed with respect to both load disturbance attenuation and set-point change. Certain performance indices are given providing guidelines for achievable accuracy and controller settings. Exact formulas for extrema of time responses are derived, which use a novel parametrization of system poles. For transfer between equilibria under control signal limitations, set-point generators with a feed-forward from the reference signal are proposed. The effect of an anti-windup controller augmentation is examined. A method based on solution of the non-linear differential equation describing the tank draining is proposed for a tank model identification. Moreover, invariance of the control system properties with respect to the actual equilibrium is highlighted.
01 Jul 2017
TL;DR: This work extends a newly derived control-oriented model to include continuous separation and uses this extended model to propose a nonlinear model predictive control algorithm to improve control and optimize the purity of the gas product.
Abstract: Gas-liquid cylindrical cyclone separators are increasingly used for separation of hydrocarbons in the oil and gas industry. They are favoured for their low weight and compact design. However, a challenge is their small volume, which makes them sensitive to flow variations, which can cause operational and separation problems. Optimal control can improve both operational and separation performance. We extend a newly derived control-oriented model to include continuous separation and use this extended model to propose a nonlinear model predictive control algorithm to improve control and optimize the purity of the gas product. To achieve this, one degree of freedom is freed up by implementing band control of the liquid level. The extended model is qualitatively verified in simulation and the performance of the nonlinear model predictive control algorithm is compared with and without measurement noise and with and without optimization of the gas product purity.
01 Jul 2017
TL;DR: The effectiveness of the proposed FC-based DTC for induction machine (IM) drive is verified at several operating conditions and highlighted by comparing to the conventional DTC, illustrating low switching frequency, considerable ripples mitigation of torque, flux and the stator currents and improving the system performance.
Abstract: Direct torque control (DTC) of induction machines presents an acceptable tracking scheme for both electromagnetic torque and stator flux. However, conventional DTC scheme, based on hysteresis comparators and the switching table, suffers from large torque and flux ripples, requiring high switching frequency operation for the voltage source inverter. In this paper, a modified DTC scheme based on fuzzy logic rules is proposed. A fuzzy controller (FC) is designed in order to give the appropriate inverter voltage vector. The FC could judge the deviation degree of the torque and flux errors to select the optimum voltage vector according to the fuzzy logic inference. The effectiveness of the proposed FC-based DTC for induction machine (IM) drive is verified at several operating conditions and highlighted by comparing to the conventional DTC. The obtained results illustrate low switching frequency, considerable ripples mitigation of torque, flux and the stator currents and improving the system performance.
03 Jul 2017
TL;DR: A low cost experiment based on a small Arduino based prototype to introduce students to mobile robotics, having as base a challenge and a kinematics that are commonly applied in Junior competitions.
Abstract: In this paper it is presented a low cost experiment based on a small Arduino based prototype. The chosen educational challenge is a classical introductory experiment, that consists in following a line with a mobile robot. The presented experiment has as goal to introduce students to mobile robotics, having as base a challenge and a kinematics that are commonly applied in Junior competitions. A group of students participated in a workshop that consisted, initially, in a lecture where tutors explained the differential robot kinematics and how to develop a controller for the proposed challenge. Then the students, after the theoretical introduction, implemented the proposed robot controller.
01 Jul 2017
TL;DR: An external model based, data-driven approach to robust output regulation with an error-feedback reset logic for the state of the external model is proposed.
Abstract: In this paper, we propose an external model based, data-driven approach to robust output regulation. No a priori knowledge of the plant and the exosystem is required, apart from their state dimension and an upper bound on the exosystem frequencies. The core of the method lies in an error-feedback reset logic for the state of the external model.