Monday, July 18 |
08:00 - 08:45 |
Breakfast (Sunshine/ADM) |
08:45 - 09:00 |
Introduction and Welcome by the UBCO BIRS Staff (Arts Building room 386) |
09:00 - 09:30 |
Charles Audet: Monotonic grey box direct search optimization ↓ We are interested in blackbox optimization for which the user is aware of monotonic behaviour of some constraints defining the problem. That is, when increasing a variable, the user is able to predict if a function increases or decreases, but is unable to quantify the amount by which it varies. We refer to this type of problems as ``monotonic grey box'' optimization problems. Our objective is to develop an algorithmic mechanism that exploits this monotonic information to find a feasible solution as quickly as possible. With this goal in mind, we have built a theoretical foundation through a thorough study of monotonicity on cones of multivariate functions. We introduce a trend matrix and a trend direction to guide the Mesh Adaptive Direct Search (Mads) algorithm when optimizing a monotonic grey box optimization problem. Different strategies are tested on a some analytical test problems, and on a real hydroelectric dam optimization problem. (Arts Building room 386) |
09:30 - 09:45 |
Coffee Break (Arts Building room 386) |
09:45 - 10:15 |
Gabriel Jarry-Bolduc: A derivative-free trust region algorithm using calculus rules to build the model function ↓ In this talk, we consider a box-constrained minimization problem where the objective function is composed of more than one function. We will present the potential benefits of using a calculus-based approach when building the model function. (Arts Building room 386) |
10:15 - 11:00 |
Coffee Break (Arts Building room 386) |
11:00 - 11:30 |
Francesco Rinaldi: A weak tail-bound probabilistic condition for function estimation in stochastic derivative-free optimization ↓ In this talk, we use tail bounds to define a probabilistic condition for function estimation that eases the theoretical analysis of stochastic derivative-free optimization methods. In particular, we focus on the unconstrained minimization of a potentially non-smooth function, whose values can only be estimated via stochastic observations, and give a simplified convergence proof for both a direct search and a basic trust-region scheme. Finally, we discuss some possible extensions. (Arts Building room 386) |
11:30 - 13:30 |
Lunch (Sunshine Café) |
13:30 - 14:00 |
Sébastien Le Digabel: SOLAR: A solar thermal power plant simulator for blackbox optimization benchmarking ↓ This work introduces SOLAR, a collection of optimization problems provided as a benchmarking tool for blackbox solvers. Each problem optimizes the design of a concentrated solar power plant defined as a blackbox numerical model. The type of variables, dimensionality, and number and type of constraints are different across problems. Optimization may be single or biobjective. The solar plant model considers several subsystems: a heliostats field, a central cavity receiver, a molten salt thermal energy storage, a steam generator and an idealized power block. Benchmark optimization results are provided using the NOMAD software package. (Arts Building room 386) |
14:00 - 14:15 |
Coffee Break (Arts Building room 386) |
14:15 - 14:45 |
Sébastien Kerleau: Positive k-spanning sets and their use in derivative-free optimization ↓ A positive spanning set (PSS) is a set of vectors that spans the whole space using non-negative linear combinations. Derivative-free optimization methods based on PSSs typically favor those with the best cosine measure. A good cosine measure implies that the directions in the PSS can be useful for optimization purposes, however this metric does not fully account for the structure of the PSS. In particular, it does not reflect the spanning capabilities of a given subset of the PSS vectors.
In this talk, we will focus on a particular subclass of PSSs, called positive k-spanning sets. A positive k-spanning set (PkSS) remains positively spanning even when some of its elements are removed. After formally defining the positive k-spanning property, we will provide examples of PkSSs. We will then explain how to construct PkSS of minimum cardinality, using arguments from polytope theory. Finally, we will introduce a new measure
for quantifying the quality of a PkSS, inspired by the cosine measure for positive spanning sets. (Arts Building room 386) |
14:45 - 15:30 |
Coffee Break (Arts Building room 386) |
15:30 - 16:00 |
Giampaolo Liuzzi: A new derivative-free interior point method for constrained black-box optimization ↓ Nowadays, black-box optimization problems are ubiquitous in many applications. This class of
problems is characterized by objective and/or constraint functions that are only known through
their input-output behavior, i.e. no analytical expression of the functions is available. Thus,
typically, first order derivatives cannot be used or are, at the very least, untrustworthy. Such
problems mainly arise in those contexts where the objective and constraint functions are computed
by means of relatively complex and time-consuming simulators. Frequently in such applications,
constraints are hard in the sense that functions cannot be computed (or they could not even be defined)
outside of the feasible region. In such situations, it is customary to use an extreme or dead penalty
approach in which an extremely high value is assigned to the objective function out side of the
feasible region. In this way, if a feasible starting point is known, the algorithm remains trapped
within the feasible region. However, such an approach frequently causes numerical difficulties which
are basically due to the discontinuity of the objective function on the boundary of the feasible region.
In this talk, we approach the problem with hard constraints by means of an interior log-barrier penalty
function. We propose an algorithm model and study its theoretical convergence properties. Further, we
also present preliminary numerical results which show viability of the proposed method. (Arts Building room 386) |
16:00 - 16:15 |
Coffee Break (Arts Building room 386) |
16:15 - 16:45 |
Christine Shoemaker: Surrogate-assisted many-objective optimization with reference vector guided candidate search and aggregated surrogate model ↓ Designing many-objective optimization algorithms that cope with more than three objectives is challenging, especially when objective functions are multimodal and expensive to evaluate. In this study, we present a novel surrogate-assisted many-objective optimization algorithm named RECAS. The proposed algorithm is a non-evolutionary-based method and iteratively determines new points for expensive evaluation via a series of independent reference vector-guided candidate searches. In each candidate search, unlike most prior related studies, RECAS employs a surrogate model in an aggregated manner to directly approximate the acquisition function that maps each point to its quality assessment indicator rather than a certain objective.
We prove that RECAS converges almost surely to the Pareto-optimal front under some mild assumptions. Finally, in the numerical experiments, RECAS generally outperforms three recent state-of-the-art algorithms in maintaining convergent and well-spread approximations of the Pareto-optimal front on a suite of 84 widely used test problems with up to 10 objectives. The good performance of RECAS on two water shed simulation model calibration problems further indicates its great potential in handling computationally expensive real-world applications. (Zoom) |