Exemplo n.º 1
0
int main(int argc,char *argv[]) {
    if(argc != 5) {
            printf("Wrong Number of Arguments\n");
            exit(0);
    }

    //double alpha1 = argv[1]-0.0;
    double alpha1, alpha2, beta1, beta2, gamma1, gamma2, phi1, phi2, eta1, eta2;
    alpha1 = alpha2 = atof( argv[1] );
    beta1 = 0.12;
    beta2 = atof( argv[2] );
    eta1 = 1.0/3.0;
    eta2 = 1.0/3.0;
    gamma1 = gamma2 = 1.0/5.0;
    phi1 = phi2 = atof( argv[4]);
    int intro_time;
    intro_time = atoi( argv[3] );

    int num_reps = 5000;

    Network net = Network("gillespie toy", Network::Undirected);
    net.populate(10000);
    for(int i =1; i <= num_reps; i++){
        net.clear_edges();
        net.erdos_renyi(5);
        Gillespie_SEIR_TwoStrain_Network sim(&net, alpha1, alpha2, eta1, eta2, gamma1, gamma2, beta1, beta2, phi1, phi2, intro_time);
        cout << "Simulation number: " << i << endl;
        sim.reset();
        sim.rand_infect(5, 1);
        sim.run_simulation(10000.0);
    }
    return 0;
}
Exemplo n.º 2
0
int main(int argc,char *argv[]) {
    if(argc != 10) {
            printf("Wrong Number of Arguments\n");
            exit(0);
    }

    //double alpha1 = argv[1]-0.0;
    double beta_vax, beta_dis, gamma_vax, gamma_dis;
    int init_inf, init_vax;

    beta_vax = atof( argv[1] ); // vaccine transmissibility
    beta_dis = atof( argv[2] ); // disease transmissibility
    gamma_vax = atof( argv[3] ); // vaccine recovery rate
    gamma_dis = atof( argv[4] ); // disease recovery rate
    init_vax = atoi( argv[5] ); // number initially vaccinated
    init_inf = atoi( argv[6] ); // number initially infected

    string network_type = argv[7] ;
    string vax_type = argv[8];
    int num_reps = atoi( argv[9]);

    Network net = Network("gillespie toy", Network::Undirected);
    net.populate(10000);
    for(int i =1; i <= num_reps; i++){
        net.clear_edges();
        if(network_type == "er"){
            net.erdos_renyi(10);
        } else if(network_type == "exp"){
            net.rand_connect_exponential(0.1);
        } else if(network_type == "unif"){
            vector<int> degrees(10000, 10);
            net.rand_connect_explicit(degrees);
        } else{
            cerr << "Unrecognized network type" << endl;
        }
        Gillespie_trans_vaccine sim(&net, gamma_vax, gamma_dis, beta_vax, beta_dis, vax_type);
        cout << "Simulation number: " << i << endl;
        sim.reset();
        sim.run_simulation(10000.0, init_vax, init_inf);
    }
    return 0;
}
Exemplo n.º 3
0
// runs a seasonally forced gillespie simulation on a exponential network
int main(int argc,char *argv[]) {
    if(argc != 9) {
            printf("Wrong Number of Arguments\n");
            exit(0);
    }

    double alpha1, alpha2, beta1_max, beta2_max, gamma1, gamma2, phi1, phi2, eta1, eta2;
    alpha1 = alpha2 = atof( argv[1] );
    beta1_max = atof( argv[2] );  
    beta2_max = atof( argv[3] );
    eta1 = eta2 = 1.0/2.62;
    gamma1 = gamma2 = 1.0/3.38;
    phi1 = phi2 = atof( argv[4]);
    int intro_time, start_ind, shift;
    intro_time = atoi( argv[5] );
    start_ind = atoi( argv[6] );
    shift = atoi( argv[7] );
    string network_type = argv[8];
    
    int num_reps = 4000;

    Network net = Network("gillespie toy", Network::Undirected);
    net.populate(10000);
    for(int i =1; i <= num_reps; i++){
        net.clear_edges();
        if(network_type == "exp"){
            net.rand_connect_exponential(0.06453487);
        } else if(network_type == "unif"){
            vector<int> degrees(10000, 16);
            net.rand_connect_explicit(degrees);
        } else{
            cerr << "Unrecognized network type" << endl;
        }
        // cout << net.mean_deg() << endl;
        Gillespie_SEIR_TwoStrain_Network sim(&net, alpha1, alpha2, eta1, eta2, gamma1, gamma2, beta1_max, beta2_max, phi1, phi2, intro_time, start_ind, shift);
        cout << "Simulation number: " << i << endl;
        sim.reset();
        sim.rand_infect(5, 1);
        sim.run_simulation(10000.0);
    }
    return 0;
}