samyama_optimization/algorithms/
itlbo.rs1use crate::common::{Individual, OptimizationResult, Problem, SolverConfig};
2use ndarray::Array1;
3use rand::prelude::*;
4use rayon::prelude::*;
5
6pub struct ITLBOSolver {
7 pub config: SolverConfig,
8 pub elite_size: usize,
9}
10
11impl ITLBOSolver {
12 pub fn new(config: SolverConfig) -> Self {
13 let elite_size = std::cmp::max(1, config.population_size / 10); Self { config, elite_size }
15 }
16
17 pub fn solve<P: Problem>(&self, problem: &P) -> OptimizationResult {
18 let mut rng = thread_rng();
19 let dim = problem.dim();
20 let (lower, upper) = problem.bounds();
21
22 let mut population: Vec<Individual> = (0..self.config.population_size)
24 .map(|_| {
25 let mut vars = Array1::zeros(dim);
26 for i in 0..dim {
27 vars[i] = rng.gen_range(lower[i]..upper[i]);
28 }
29 let fitness = problem.fitness(&vars);
30 Individual::new(vars, fitness)
31 })
32 .collect();
33
34 let mut history = Vec::with_capacity(self.config.max_iterations);
35
36 for iter in 0..self.config.max_iterations {
37 if iter % 10 == 0 {
38 println!("ITLBO Solver: Iteration {}/{}", iter, self.config.max_iterations);
39 }
40 population.sort_by(|a, b| a.fitness.partial_cmp(&b.fitness).unwrap());
42
43 let elites: Vec<Individual> = population.iter().take(self.elite_size).cloned().collect();
45
46 let best_fitness = population[0].fitness;
47 let teacher_vars = population[0].variables.clone();
48 let mean_vars = self.calculate_mean(&population, dim);
49
50 history.push(best_fitness);
51
52 population = population
54 .into_par_iter()
55 .map(|mut ind| {
56 let mut local_rng = thread_rng();
57 let tf: f64 = local_rng.gen_range(1.0..2.0);
59
60 let mut new_vars = Array1::zeros(dim);
61 for j in 0..dim {
62 let r: f64 = local_rng.gen();
63 let delta = r * (teacher_vars[j] - tf * mean_vars[j]);
64 new_vars[j] = (ind.variables[j] + delta).clamp(lower[j], upper[j]);
65 }
66
67 let new_fitness = problem.fitness(&new_vars);
68 if new_fitness < ind.fitness {
69 ind.variables = new_vars;
70 ind.fitness = new_fitness;
71 }
72 ind
73 })
74 .collect();
75
76 let pop_len = population.len();
78
79 let old_population = population.clone();
82
83 population = population
84 .into_par_iter()
85 .enumerate()
86 .map(|(i, mut ind)| {
87 let mut local_rng = thread_rng();
88
89 let mut learner_j_idx;
90 loop {
91 learner_j_idx = local_rng.gen_range(0..pop_len);
92 if learner_j_idx != i { break; }
93 }
94 let ind_j = &old_population[learner_j_idx];
95
96 let mut new_vars = Array1::zeros(dim);
97 for k in 0..dim {
98 let r: f64 = local_rng.gen();
99 let delta = if ind.fitness < ind_j.fitness {
100 r * (&ind.variables[k] - &ind_j.variables[k])
101 } else {
102 r * (&ind_j.variables[k] - &ind.variables[k])
103 };
104 new_vars[k] = (ind.variables[k] + delta).clamp(lower[k], upper[k]);
105 }
106
107 let new_fitness = problem.fitness(&new_vars);
108 if new_fitness < ind.fitness {
109 ind.variables = new_vars;
110 ind.fitness = new_fitness;
111 }
112 ind
113 })
114 .collect();
115
116 population.sort_by(|a, b| a.fitness.partial_cmp(&b.fitness).unwrap());
119
120 let len = population.len();
121 for k in 0..self.elite_size {
122 if elites[k].fitness < population[len - 1 - k].fitness {
124 population[len - 1 - k] = elites[k].clone();
125 }
126 }
127 }
128
129 let best_idx = 0; let final_best = &population[best_idx];
131
132 OptimizationResult {
133 best_variables: final_best.variables.clone(),
134 best_fitness: final_best.fitness,
135 history,
136 }
137 }
138
139 fn calculate_mean(&self, population: &[Individual], dim: usize) -> Array1<f64> {
140 let mut mean = Array1::zeros(dim);
141 for ind in population {
142 mean += &ind.variables;
143 }
144 mean / (population.len() as f64)
145 }
146}