Dynamic analysis and control of a rice-pest system under transcritical bifurcations

View article
Ecology

Main article text

 

Introduction

Methods

Study area

Lotka–Volterra model in an optimal control problem setting

Dynamical modelling in form of a hybrid natural/chemical IPM strategy

Assumption and formulation of the optimal control problem

  1. When cultural methods are applied during cultivation, the production rate of rice increases rapidly. Since cultural methods can directly increase the production of rice and the use of cultural methods does not depend on the density of rice pests, let u1x1 be the increment in the production of rice due to cultural methods. The first equation of the rice-pest system (S4) can be represented by including control as ddtx1(t)=(α1β1x2(t))x1(t)d1x21(t)+u1(t)x1(t) here, x1(t) represents the annual production of rice per unit area (Mt/h), α1 shows the reproduction rate of rice, β1 represents the loss rate of x1(t) due to the consumption of pests, d1 presents the decrease rate due to intraspecific competition in species x1(t) due to natural causes that are not related to pests e.g., viral infections, droughts or floods (Bazykin, 1976; Liu & Jiang, 2021). Please note that pesticides do not directly increase the production of rice, but directly control the level of pest species causing an indirect increase of rice production. Since the term “ β1x2x1” in Eq. (5) represents the impact of pest density, no additional term is required to present the effect of pesticides on the rice production.

  2. When cultural methods are applied in rice cultivation, several rice pests die off because of soil rotation and the presence of predators. Therefore, the cultural methods decline the density of rice pests and let u1x1x2 be the declining number of pests due to the adoption of cultural methods. On the other hand, when emergency situations, pesticides are applied according to Eq. (4), which significantly reduces the pest population. Since the application of pesticides depends on the density of insect pests, let u2x1x2 be the decline in the density of pest population after the use of pesticides. Hence, the second equation of the rice-pest system (S4) can be represented considering the decision model Eq. (4) as in the following: ddtx2(t)=(β2x1(t)α2)x2(t)d2x22(t)F(D,t)x1(t)x2(t) here, x2(t) represents the density of rice pests at time t, β2 shows the energy gain rate of pest population by consuming rice, α2 represents the decline rate of the pest’s population proportionally with the decline of rice production, d2 shows the decrease rate due to intraspecific competition between x2(t) due to natural causes that not related to x1(t), e.g., viral infection and heavy rains (Bazykin, 1976; Yang, 2020). Here, the term F(Dt)x1x2 corresponds to u1x1x2 and u2x1x2 since the decision model Eq. (4), defined by F(D,t), decides the application of the control variables u 1 and u 2.

Characterization of the optimal control

  1. when dHdu1>0 then u1>λ2x1x2λ1x1A but for the minimization problem u1 = 0

  2. when dHdu1=0 then u1=λ2x1x2λ1x1A

  3. when dHdu1<0 then u1<λ2x1x2λ1x1A but for the minimization problem u1 = 1

  1. when dHdu1>0 then u1>λ2x1x2λ1x1A but for the minimization problem u1 = 0

  2. when dHdu1=0 then u1=λ2x1x2λ1x1A

  3. when dHdu1<0 then u1<λ2x1x2λ1x1A but for the minimization problem u1 = 1

Results

Numerical investigations of the rice-pest system (S4)

Numerical investigations of the rice-pest-control system (Eq. (7))

Significance of β as a transcritical bifurcation parameter

Discussions

Supplemental Information

Modelling of the rice-pest dynamic system and its biological control

DOI: 10.7717/peerj.16083/supp-1

Bifurcation analysis for the rice-pest system

DOI: 10.7717/peerj.16083/supp-2

Additional Information and Declarations

Competing Interests

The authors declare there are no competing interests.

Author Contributions

Sajib Mandal analyzed the data, prepared figures and/or tables, authored or reviewed drafts of the article, conceptualisation, methodology, software, validation, formal analysis, investigation, writing - original draft, and approved the final draft.

Sebastian Oberst analyzed the data, prepared figures and/or tables, authored or reviewed drafts of the article, conceptualisation, methodology, investigation, validation, writing - review and editing, and approved the final draft.

Md. Haider Ali Biswas analyzed the data, prepared figures and/or tables, authored or reviewed drafts of the article, conceptualisation, methodology, validation, resources, supervision, project administration, and approved the final draft.

Md. Sirajul Islam analyzed the data, prepared figures and/or tables, authored or reviewed drafts of the article, conceptualisation, supervision, and approved the final draft.

Data Availability

The following information was supplied regarding data availability:

The rice-pest model and the transcritical bifurcation analysis of the rice-pest model, the data, and the MATLAB codes used for carrying out all numerical simulations are available in the Supplementary Files.

Funding

The authors received no funding for this work.

1 Citation 1,636 Views 55 Downloads