253 research outputs found
Distributed Consensus of Linear Multi-Agent Systems with Switching Directed Topologies
This paper addresses the distributed consensus problem for a linear
multi-agent system with switching directed communication topologies. By
appropriately introducing a linear transformation, the consensus problem is
equivalently converted to a stabilization problem for a class of switched
linear systems. Some sufficient consensus conditions are then derived by using
tools from the matrix theory and stability analysis of switched systems. It is
proved that consensus in such a multi-agent system can be ensured if each agent
is stabilizable and each possible directed topology contains a directed
spanning tree. Finally, a numerical simulation is given for illustration.Comment: The paper will be presented at the 2014 Australian Control Conference
(AUCC 2014), Canberra, Australi
Guaranteed Cost Tracking for Uncertain Coupled Multi-agent Systems Using Consensus over a Directed Graph
This paper considers the leader-follower control problem for a linear
multi-agent system with directed communication topology and linear nonidentical
uncertain coupling subject to integral quadratic constraints (IQCs). A
consensus-type control protocol is proposed based on each agent's states
relative to its neighbors and leader's state relative to agents which observe
the leader. A sufficient condition is obtained by overbounding the cost
function. Based on this sufficient condition, a computational algorithm is
introduced to minimize the proposed guaranteed bound on tracking performance,
which yields a suboptimal bound on the system consensus control and tracking
performance. The effectiveness of the proposed method is demonstrated using a
simulation example.Comment: Accepted for presentation at the 2013 Australian Control conferenc
Designing Fully Distributed Consensus Protocols for Linear Multi-agent Systems with Directed Graphs
This paper addresses the distributed consensus protocol design problem for
multi-agent systems with general linear dynamics and directed communication
graphs. Existing works usually design consensus protocols using the smallest
real part of the nonzero eigenvalues of the Laplacian matrix associated with
the communication graph, which however is global information. In this paper,
based on only the agent dynamics and the relative states of neighboring agents,
a distributed adaptive consensus protocol is designed to achieve
leader-follower consensus for any communication graph containing a directed
spanning tree with the leader as the root node. The proposed adaptive protocol
is independent of any global information of the communication graph and thereby
is fully distributed. Extensions to the case with multiple leaders are further
studied.Comment: 16 page, 3 figures. To appear in IEEE Transactions on Automatic
Contro
Solving specified-time distributed optimization problem via sampled-data-based algorithm
Despite significant advances on distributed continuous-time optimization of
multi-agent networks, there is still lack of an efficient algorithm to achieve
the goal of distributed optimization at a pre-specified time. Herein, we design
a specified-time distributed optimization algorithm for connected agents with
directed topologies to collectively minimize the sum of individual objective
functions subject to an equality constraint. With the designed algorithm, the
settling time of distributed optimization can be exactly predefined. The
specified selection of such a settling time is independent of not only the
initial conditions of agents, but also the algorithm parameters and the
communication topologies. Furthermore, the proposed algorithm can realize
specified-time optimization by exchanging information among neighbours only at
discrete sampling instants and thus reduces the communication burden. In
addition, the equality constraint is always satisfied during the whole process,
which makes the proposed algorithm applicable to online solving distributed
optimization problems such as economic dispatch. For the special case of
undirected communication topologies, a reduced-order algorithm is also
designed. Finally, the effectiveness of the theoretical analysis is justified
by numerical simulations
Finite-Time Convergent Algorithms for Time-Varying Distributed Optimization
This paper focuses on finite-time (FT) convergent distributed algorithms for
solving time-varying distributed optimization (TVDO). The objective is to
minimize the sum of local time-varying cost functions subject to the possible
time-varying constraints by the coordination of multiple agents in finite time.
We first provide a unified approach for designing finite/fixed-time convergent
algorithms to solve centralized time-varying optimization, where an auxiliary
dynamics is introduced to achieve prescribed performance. Then, two classes of
TVDO are investigated included unconstrained distributed consensus optimization
and distributed optimal resource allocation problems (DORAP) with both
time-varying cost functions and coupled equation constraints. For the previous
one, based on nonsmooth analysis, a continuous-time distributed discontinuous
dynamics with FT convergence is proposed based on an extended zero-gradient-sum
method with a local auxiliary subsystem. Different from the existing methods,
the proposed algorithm does not require the initial state of each agent to be
the optimizer of the local cost function. Moreover, the provided algorithm has
a simpler structure without estimating the global information and can be used
for TVDO with nonidentical Hessians. Then, an FT convergent distributed
dynamics is further obtained for time-varying DORAP by dual transformation.
Particularly, the inverse of Hessians is not required from a dual perspective,
which reduces the computation complexity significantly. Finally, two numerical
examples are conducted to verify the proposed algorithms
A Novel Dynamic Event-triggered Mechanism for Dynamic Average Consensus
This paper studies a challenging issue introduced in a recent survey, namely
designing a distributed event-based scheme to solve the dynamic average
consensus (DAC) problem. First, a robust adaptive distributed event-based DAC
algorithm is designed without imposing specific initialization criteria to
perform estimation task under intermittent communication. Second, a novel
adaptive distributed dynamic event-triggered mechanism is proposed to determine
the triggering time when neighboring agents broadcast information to each
other. Compared to the existing event-triggered mechanisms, the novelty of the
proposed dynamic event-triggered mechanism lies in that it guarantees the
existence of a positive and uniform minimum inter-event interval without
sacrificing any accuracy of the estimation, which is much more practical than
only ensuring the exclusion of the Zeno behavior or the boundedness of the
estimation error. Third, a composite adaptive law is developed to update the
adaptive gain employed in the distributed event-based DAC algorithm and dynamic
event-triggered mechanism. Using the composite adaptive update law, the
distributed event-based solution proposed in our work is implemented without
requiring any global information. Finally, numerical simulations are provided
to illustrate the effectiveness of the theoretical results.Comment: 9 pages, 8 figure
Fixed-Time Gradient Flows for Solving Constrained Optimization: A Unified Approach
The accelerated method in solving optimization problems has always been an
absorbing topic. Based on the fixed-time (FxT) stability of nonlinear dynamical
systems, we provide a unified approach for designing FxT gradient flows
(FxTGFs). First, a general class of nonlinear functions in designing FxTGFs is
provided. A unified method for designing first-order FxTGFs is shown under
PolyakL jasiewicz inequality assumption, a weaker condition than strong
convexity. When there exist both bounded and vanishing disturbances in the
gradient flow, a specific class of nonsmooth robust FxTGFs with disturbance
rejection is presented. Under the strict convexity assumption, Newton-based
FxTGFs is given and further extended to solve time-varying optimization.
Besides, the proposed FxTGFs are further used for solving equation-constrained
optimization. Moreover, an FxT proximal gradient flow with a wide range of
parameters is provided for solving nonsmooth composite optimization. To show
the effectiveness of various FxTGFs, the static regret analysis for several
typical FxTGFs are also provided in detail. Finally, the proposed FxTGFs are
applied to solve two network problems, i.e., the network consensus problem and
solving a system linear equations, respectively, from the respective of
optimization. Particularly, by choosing component-wisely sign-preserving
functions, these problems can be solved in a distributed way, which extends the
existing results. The accelerated convergence and robustness of the proposed
FxTGFs are validated in several numerical examples stemming from practical
applications
A Framework on Fully Distributed State Estimation and Cooperative Stabilization of LTI Plants
How to realize high-level autonomy of individuals is one of key technical
issues to promote swarm intelligence of multi-agent (node) systems with
collective tasks, while the fully distributed design is a potential way to
achieve this goal. This paper works on the fully distributed state estimation
and cooperative stabilization problem of linear time-invariant (LTI) plants
with multiple nodes communicating over general directed graphs, and is aimed to
provide a fully distributed framework for each node to perform cooperative
stabilization tasks. First, by incorporating a novel adaptive law, a
consensus-based estimator is designed for each node to obtain the plant state
based on its local measurement and local interaction with neighbors, without
using any global information of the communication topology. Subsequently, a
local controller is developed for each node to stabilize the plant
collaboratively with performance guaranteed under mild conditions.
Specifically, the proposed method only requires that the communication graph be
strongly connected, and the plant be collectively controllable and observable.
Further, the proposed method can be applied to pure fully distributed state
estimation scenarios and modified for noise-bounded LTI plants. Finally, two
numerical examples are provided to show the effectiveness of the theoretical
results
Cooperative Control of Multi-Channel Linear Systems with Self-Organizing Private Agents
Cooperative behavior design for multi-agent systems with collective tasks is
a critical issue to promote swarm intelligence. This paper investigates
cooperative control for a multi-channel system, where each channel is managed
by an agent that can communicate with neighbors in a network. Each agent is
expected to self-organize a controller based only on local information and
local interaction to stabilize the multi-channel system collaboratively. A
novel cooperative control strategy is designed for each agent by leveraging a
decomposing technique and a fusion approach. Then, a privacy-preserving
mechanism is incorporated into this strategy to shield all private information
from eavesdropping. Moreover, a fully distributed designing method for the
strategy parameters is developed. As a result, agents can self-design and
self-perform their controllers with private information preserved. It is proved
that the multi-channel system stability can be ensured by the proposed strategy
with finite fusion steps during each control interval. In addition, the cost of
introducing the privacy-preserving mechanism and the effect of adding more
channels on the system performance are quantitatively analyzed, which benefits
mechanism design and channel placement. Finally, several comparative simulation
examples are provided to demonstrate the effectiveness of the theoretical
results
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