DOI : https://doi.org/10.5281/zenodo.19534322
- Open Access

- Authors : Prof. M. D. Khediya, Dr. C. B. Bhatt, Dr. B. M. Daxini
- Paper ID : IJERTV15IS040364
- Volume & Issue : Volume 15, Issue 04 , April – 2026
- Published (First Online): 12-04-2026
- ISSN (Online) : 2278-0181
- Publisher Name : IJERT
- License:
This work is licensed under a Creative Commons Attribution 4.0 International License
Synergizing IoT and Multi-Agent Systems A Decision-Support Framework for Weather-Resilient Cotton Farming
M. D. Khediya
Research Scholar, Department of Instrumentation & Control, Gujarat Technological University, Ahmedabad, Gujarat, India
Dr. C. B. Bhatt
Principal, Government MCA College, Ahmedabad, Gujarat, India
Dr. B. M. Daxini
Assistant Prof., Department of Instrumentation & Control, Shantilal Shah Engineering College, Bhavnagar, Gujarat, India
Abstract – Cotton decision support has moved from isolated forecasts toward coordinated, agent-driven operations. The earlier body of work contributed interpretable weather-based risk estimation, degree-day phenology, microclimate correction, and ontology-backed advisory systems for whitefly, jassid, thrips, and pink bollworm [7][23], [26][33], [39][46], [51], [52]. More recent studies extend this foundation through multi-agent irrigation scheduling, mission planning for field operations, IoT-based monitoring, and learning- assisted control of water and other inputs [53][62]. Taken together, these streams point to a practical architecture for cotton farming: transparent weather and crop-stage signals, a knowledge layer that keeps recommendations legible, agent controllers that coordinate resources, and delivery pipelines that remain reliable under real field conditions. This review synthesizes those strands and organizes the evidence into a practical operational framework covering signals and features, knowledge and ontology, sensing and machine learning, agent-based resource optimization, delivery architecture, and deployment governance.. The review shows that the most reliable systems combine transparent weather baselines, careful data validation, explicit thresholds, and safe fallback behavior when sensors drift, weather falls outside the training range, or connectivity drops.
Keywords: Cotton farming; decision support systems; intelligent agent systems; multi-agent systems; Internet of Things; weather-driven pest forecasting; ontology-based advisory; irrigation optimization
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INTRODUCTION
Cotton production remains highly sensitive to pest pressure, irrigation timing, and the quality of field decisions made under uncertainty. Weather, crop stage, and local management history interact over short horizons, making the difference between a timely intervention and a preventable loss. This is why decision support in cotton has evolved around short-lead forecasting, local advisories, and threshold-based actions rather than broad seasonal intuition alone [7][23]. Work on residues, climate-linked pesticide demand, and integrated pest management has further reinforced the need for targeted, explainable interventions instead of fixed calendar spraying [1][6].
The cotton literature already provides a strong operational base. Degree-day rules and lagged weather features offer biologically grounded explanations of pest development [7], [21]. Hurdle and zero-inflated regressions handle sparse trap and scouting counts while preserving interpretability [19], [20], [22]. Ontology-backed and expert-system approaches translate predictions into clear, label-safe actions that extension teams can audit and update [34], [39][46]. At the same time, low-cost sensing, phone-based imaging, and mobile advisory platforms have made field-scale data capture more practical [16], [17], [26], [27], [49], [50].
The newer agent and IoT literature extends this core in an important way. Rather than simply predicting risk, agent-based systems coordinate resources such as irrigation, field missions, edge computing, and alerts across multiple plots and devices [53][62]. The decision problem therefore extends beyond weekly risk estimation to field prioritization, resource allocation, and system response under changing weather, network quality, and sensor reliability. The novelty of this review lies in connecting cotton- specific forewarning and ontology-based DSS literature with the newer agent and IoT literature on operational resource coordination, rather than treating them as separate strands.
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SCOPE AND METHODS
This study is a targeted narrative review based on two manually curated literature sets: cotton pest and DSS studies, and agent- based resource optimization studies relevant to smart agriculture. The first consists of 52 unique cotton and decision-support studies after de-duplication. These papers and reports cover weather-driven forewarning, microclimate-aware pest management, imaging and sensing, ontology and expert systems, yield-linked modeling, and advisory delivery. The second corpus consists of 10 newly added papers on intelligent agents, IoT delivery, mission planning, fuzzy cognitive maps, irrigation management, and smart agriculture control [53][62].
The reviewed studies were grouped into six functional layers: signals and features, interpretable baselines, knowledge and ontology, sensing and machine learning, agent control and scheduling, and delivery and governance. For each paper, the following fields were considered wherever available: target problem, crop or farm context, inputs, feature engineering, model or controller family, validation design, reported outcomes, deployment notes, and operational constraints. Because the studies vary substantially in design, metrics, and maturity, the review uses a structured narrative rather than a statistical meta-analysis. Emphasis is placed on deployment credibility, especially year-wise or site-wise validation, bias correction, reason codes, and maintenance requirements. Studies were retained when they addressed cotton forewarning, cotton-relevant decision support, ontology-based advisory or agent-driven optimization of agricultural resources such as water, sensing, or field operations.
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WEATHER-DRIVEN FOREWARNING
Weather-driven models remain the most practical starting point for operational cotton DSS. Weekly summaries of temperature, relative humidity, rainfall, wind, and short lag structures appear repeatedly across successful studies [7][23]. These models are useful because they align with pest biology and can be explained to non-specialist users. Whitefly incidence forecasting in Punjab and Tamil Nadu illustrates how local calibration converts generic weather relationships into district-level advisories with useful one- to two-week lead times [19], [20]. Temperature-based phenology offers similarly clear value for pink bollworm by linking control windows to thermal accumulation rather than intuition [21].
Where trap counts and field observations are sparse or zero-heavy, hurdle and zero-inflated approaches are especially valuable. They address the statistical reality of low-count pest data without collapsing into unstable estimates [22]. That matters in practice because cotton monitoring is irregular, station coverage is imperfect, and false certainty is dangerous. More classical GLM and GLMM approaches still have value where counts are moderate and variance is manageable [9], [11], but many operational datasets favor models that explicitly account for zero inflation.
These weather-driven systems perform best when paired with stable field data practices, including reliable station placement, crop-stage logging, and consistent scouting. Nearby or bias-corrected stations, crop-stage logs, and limited but consistent scouting outperform high-complexity models fed by noisy data. This is the underlying lesson across much of the cotton forecasting literature: strong operations beat flashy modeling when the goal is a usable farm system. he main model families represented in the literature differ less in mathematical sophistication than in their data requirements, maintenance burden, and failure behavior under field conditions.
Table 1. Model families and trade-offs
Model family
Typical use
Strengths
Limits
Data needs
Validation to require
Refs
Degree-day rules (phenology thresholds)
Stage-timed actions, e.g., PBW
Simple, transparent; easy to maintain
Needs local calibration; sensitive to sowing date errors
Daily Tmax/Tmin near fields; sowing dates
Year-wise or site-wise splits; threshold
checks
[7], [21] Hurdle / Zero- inflated (ZINB) counts
Sucking pests with many zeros
Handles zero inflation; interpretable
coefficients
Can overreact to station gaps; lag mis-spec hurts
Weekly weather with 13 week lags; trap counts
Site-wise CV; zero-fraction sensitivity
[19], [20], [22] GLM/GLMM
counts
Incidence where variance is moderate
Coefficients
readable; quick to fit
Less robust to heavy zeros
Weekly weather; stage flags
Site-wise CV;
dispersion checks
[9], [11] Time-series ML
Nonlinear interactions;
Captures
Needs drift
Multi-year weather;
Rolling-origin
[23], Model family
Typical use
Strengths
Limits
Data needs
Validation to require
Refs
(trees, LSTM/GRU)
longer lags
interactions; can improve lead
monitoring; risk of overfit
stage markers; labels
eval; out-of-
sample districts
[27], [32], [33] Image-based detection (edge/CNN)
Rapid presence/severity corroboration
Fast field checks; complements forecasts
Lighting/device shift; needs relabeling
Labeled images; basic QA
Human spot checks;
confusion audits
[26], [31] Microclimate fusion
Reduce stationcanopy mismatch
Better local signal; improves thresholds
Sensor drift; placement bias
Canopy T/RH; leaf- wetness; bias vs station
Bias audits; uptime monitoring
[15], [51] Ontology + expert rules
Explainable, auditable advisory
Clear reason codes; safe options
Rule sprawl; term drift
Curated entities/relations; thresholds
Rule regression tests; change
logs
[34], [39] [46] IoT + learning pipeline
End-to-end
sensingadviceapp
Delivery proven; QC integrated
Data gaps can break chains
QCd sensor streams;
app telemetry
Packet-loss tests; latency
checks
[27], [62] Across studies, a relatively small set of predictors appears repeatedly, with the main variation lying in how these predictors are transformed and validated.
Table 2. Predictors and transformations commonly used
Predictor / feature
Typical transform
Rationale
QA / notes
Refs
Temperature
Degree-days; short moving averages
Links to insect development and stage timing
Verify base temperature; station bias checks
[7], [21] Rainfall
Weekly sum; 12 week lags
Moisture effects on pest dynamics and fungus
Fill gaps conservatively; flag outliers
[19], [22] Relative humidity
Weekly mean; lag structure
Affects survival and spread
Co-check with canopy RH if available
[7], [22] Wind
Weekly mean
Transport and drying effects
Smooth gusty days; ensure anemometer health
[19], [20] Crop stage
Binary/ordinal flags
Aligns risk with phenology
Keep sowing/flowering logs accurate
[7], [23] Microclimate bias
Stationcanopy bias
correction
Reduces site mismatch
Node placement and drift audits
[15], [51] Image features
Edge/CNN embeddings
Presence/severity corroboration
Relabel per season; handle low light
[26], [31] Soil moisture
Weekly median; thresholds
Irrigation stress interacts with pest risk
Sensor calibration; depth notes
[51] Water quality (pH/EC)
Threshold flags
Guards fertigation/irrigation advisories
Calibrate probes; periodic lab cross-check
[62] Composite lags
13 week lagged weather
Captures delayed effects
Test multiple lag specs; keep parsimonious
[19], [22], [23] Yield proxies
Prior yield; NDVI windows
Link alerts to outcomes
Use cautiously; district effects matter
[32], [33] -
KNOWLEDGE-BASED SYSTEMS AND ONTOLOGIES
Explainability is one of the strongest themes across the cotton DSS literature, and knowledge-based systems are central to that strength. Expert systems such as AMRAPALIKA showed early on that agronomic reasoning could be structured into transparent rule flows that field users could follow and revise [34]. Later systems for cotton and related crops extended this pattern by encoding symptoms, crop stages, actions, and advisory logic into rule engines and web/mobile front ends [24], [25], [35], [36], [47], [49], [50].
Ontology-driven approaches deepen this by providing a formal vocabulary for crop, pest, stage, symptom, threshold, and action
[39][46]. Their practical value lies in consistency. When sensors, dashboards, rules, and model outputs share the same conceptual layer, recommendations remain legible and updates become safer. In a real deployment, this means one threshold change can propagate across advisory text, app alerts, and backend logic without silent mismatch. This matters operationally because a shared ontology reduces inconsistency between sensor labels, advisory text, and backend rules, which in turn lowers update errors during the season.The newer agent papers build directly on this idea. An intelligent farm expert MAS and related knowledge-based frameworks effectively extend expert-system logic into distributed roles, where agents can query, reason, and act using shared knowledge objects [57], [61]. This makes ontologies more than a documentation aid; they become the glue that keeps agent behavior aligned across modules.
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SENSING AND MACHINE LEARNING
Sensing and machine learning contribute where direct observation or nonlinear interactions matter. Imagin work has shown that even lightweight edge features or CNN pipelines can rapidly confirm disease or pest presence, making them useful complements to weather-based forecasts [26], [31]. In cotton specifically, image-based techniques help answer a very practical question: whether a predicted high-risk week actually shows field evidence strong enough to justify intervention.
IoT-based sensing broadens this further. Low-cost station networks, microclimate nodes, moisture sensors, and telemetry pipelines make continuous monitoring more realistic than periodic manual logging. One important lesson from this stream is that good QC and robust delivery usually matter more than marginal gains in model complexity [27]. A model cannot support field decisions if the device clock is wrong, the moisture probe is drifting, or the data gap is silently filled with nonsense.
Machine learning brings value when it is applied selectively. LSTM, tree ensembles, and related approaches can capture interactions and longer lag structures that simple baselines miss [23], [27], [32], [33]. But they also bring maintenance burdens: drift, overfitting, and poor behavior under out-of-distribution weather. This is why the most credible papers pair ML with stronger validation designs and clearer operational context. The evidence base can be read most clearly when organized pest by pest, because lead time, validation design, and the role of sensing differ across targets.
Table 3. Pest-wise evidence snapshot (representative)
Pest/target
Representative models
Typical lead
Core predictors
Validation design
Representative sources
Whitefly
ZINB/hurdle; ML add- ons
12 weeks
Lagged T/RH/rain; stage flags
Site-wise CV; district holdouts
[19], [20], [22], [27] Jassid
GLM/GLMM; ZINB; ML
12 weeks
Lagged weather; stage
Site-wise CV; label QA
[9], [11], [22], [23] Thrips
GLM/GLMM; ZINB
12 weeks
Lagged weather; humidity
Site-wise CV; zero-rate checks
[9], [11], [23] Pink bollworm
Degree-day rules
Stage windows
Degree-days; temperature
Year-wise splits; trap corroboration
[21] Leaf diseases
Edge/CNN image detection
Near real time
Image features
Human spot checks; confusion matrix
[26], [31] Yield links
Ensembles; regressors
Seasonal
Multi-var weather; stage
Site/district holdouts
[32], [33] -
AGENT-BASED RESOURCE OPTIMIZATION AND DELIVERY
Although several of the newer agent and IoT studies are not cotton-specific, they provide directly transferable design patterns for cotton operations, especially in irrigation scheduling, mission planning, and advisory delivery. The newer literature adds an important control layer to cotton DSS: agents that coordinate actions, not just predictions. This is where the papers scope broadens from pest intelligence to operational resource use.
Mixed-cropping irrigation agents are a clear example. Instead of applying a fixed rule to all plots, agent-based irrigation management ranks fields by utility, growth stage, soil, and drought sensitivity, then allocates scarce water accordingly [54]. This
structure is appealing because it mirrors real agricultural trade-offs while making them explicit and repeatable. It also fits cotton systems where different plots may sit in different growth stages or face distinct moisture conditions.
Mission-planning papers extend the same logic to field operations. Precision farming tasks such as scouting or spraying can be framed as multi-objective problems involving time, energy, and operational risk [55]. Agent-based or auction-like allocation across UAVs or other assets then turns a forecast into an executable plan. This matters for cotton because even an accurate risk estimate has limited value if the sprayer, scouting team, or drone cannot act in the right window.
Fuzzy cognitive maps and agent hybrids contribute in another way: they preserve causal structure under uncertainty [56]. These systems are useful when field conditions are changing, data are incomplete, or farmer preferences need to be represented in the logic. Rather than hiding those uncertainties inside a black-box model, they expose relationships and trade-offs in a way users can discuss.
IoT delivery completes the loop. Monitoring systems and advisory agents bring together sensing, prediction, action logic, and app- level communication [59], [60], [62]. In many cases the main engineering challenge is not the model itself but keeping field nodes synchronized, handling intermittent connectivity, and exposing recommendations in a form that is short, credible, and actionable. The practical value of these systems depends not only on predictive accuracy but also on upkeep, failure handling, and the minimum data required to keep each design pattern honest in production. The operational implications of the reviewed design patterns are summarized in Table 4, with emphasis on maintenance burden and common failure modes.
Table 4. Design patterns for explainable, maintainable cotton DSS and agent systems
Pattern
When it makes sense
Minimum data to keep it honest
Ops upkeep
Common failure modes
Examples
Degree-day rules
Phenology-driven
pests and stage timing
Daily Tmax/Tmin near fields; sowing dates
Recalibrate thresholds
by region; update base temps yearly
Mis-timed windows
if sowing dates are off; station bias
[7], [21] Hurdle/ZINB counts
Sucking pests with
zero-heavy trap counts
Weekly weather with 13 week lags; trap counts
Check station uptime;
refit each season with zero-rate check
Inflated risk under
station outages; over-dispersion drift
[19], [20], [22] Time-series ML
Nonlinear responses; longer lags; multi-var risk
Multi-year weather; stage markers; enough labels
Monitor drift; keep a simple baseline for fallback
Silent decay; overfit to one district
[23], [27], [32], [33] Image detection
Rapid leaf/trap confirmation and
severity
Labeled images; basic QA; field lighting notes
Re-label samples; spot- check confusion cases
Domain shift across phones or lighting
[26], [31] Microclimate fusion
Stationcanopy
mismatch; canopy effects
Canopy T/RH; bias correction vs station
Sensor maintenance; periodic bias checks
Sensor drift; gaps during rains
[15], [51] Ontology + rules
Need for traceable reasons and audits
Curated entities/relations; threshold library
Rule curation; change logs; conflict tests
Rule sprawl; stale labels
[34], [39] [46] IoT + DL pipeline
End-to-end sensing
advice app
QCd sensor streams; app
telemetry
Gap-fill; watchdogs; latency checks
Data gaps; over-
trust in a single score
[27], [62] Multi-agent irrigation
Mixed crops, limited water/energy, rotation
Plot map; soil moisture; pump schedules
Policy review pre- season; override paths
Oscillation when agents compete
[54] Planning/mission agents
Route scouting, trap
service, spray windows
Spatial graph; risk map; time windows
Re-solve with new constraints daily
Missed windows
under rain; path churn
[55] Fuzzy-agent hybrids
Uncertain rules, farmer preferences
FCM weights; agent roles; qualitative states
Re-weight under drift; sanity checks
Over-tuning; opaque side-effects
[56] Advisory agent hubs
Weather, sensors, knowledge in one
place
Forecast feed; soil sensors; disease models
Back-pressure; reason codes; A/B updates
Advice without reason; stale models
[59], [60], [62] -
INTEGRATION BLUEPRINT
The combined literature supports a staged deployment path that begins with interpretable baselines and progressively adds corroboration, coordination, and delivery layers. A phased approach is important because it allows validation and operator trust to grow before more adaptive layers such as ML-assisted prioritization or agent-based coordination is introduced. Start with a transparent weather baseline using short lags and degree-days. Add microclimate and image checks only where they resolve meaningful uncertainty. Place an ontology-backed rule layer on top to encode thresholds, safe options, and explanation logic. Introduce ML when it clearly improves calibrated risk, not merely average accuracy. Use agents to coordinate scarce resources such as irrigation time, scouting capacity, and edge computing. Keep delivery robust with store-and-forward telemetry, edge fallbacks, and simple mobile or web interfaces.
This stack works because each layer has a clear job. Weather models detect risk. Ontology rules explain and constrain. Agents coordinate action. IoT keeps the loop alive. When something fails, the system can degrade toward simpler, safer behavior instead of collapsing into silence or nonsense.
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PERSISTENT CHALLENGES AND NEAR-TERM OPPORTUNITIES
Several gaps remain. First, generalization across districts and seasons continues to reduce apparent performance; models that look excellent under random splits often weaken under realistic validation. Second, calibrated probabilities linked to economic thresholds remain underdeveloped in many papers. Third, the maintenance cost of sensors, rules, and models is still underreported, even though it determines real-world viability. In practice, imaging systems function best as corroborative layers rather than as stand-alone forecasting systems, especially under variable field lighting and device conditions.
For agent systems specifically, reward design and coordination policies need care. Irrigation or routing agents can optimize the wrong thing if fairness and operational constraints are not explicit. Connectivity and device health are also structural risks. This is why observability, versioning, and safe rollback matter as much as model quality. The strongest path forward is not one giant model, but a well-behaved stack with clear contracts between components. A related operational challenge is safe degradation under failure. Sensor drift, missing telemetry, out-of-distribution weather, and conflicting agent recommendations can all degrade decision quality. Systems intended for field use should therefore include uncertainty flags, fall-back rules, and rollback to the last stable model or threshold set.
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CONCLUSION
Explainable agent systems offer a realistic next step for cotton farming. The strongest evidence still comes from modest, interpretable baselines: weather, stage, degree-days, and threshold logic. But those baselines become far more useful when wrapped in a delivery layer that senses reliably, coordinates assets, explains actions, and adapts without becoming opaque. The cotton DSS literature provides the biological and advisory backbone; the newer agent and IoT literature adds coordination and operational resilience. Together, these strands define a practical and scalable architecture for cotton farming in which prediction, explanation, coordination, and delivery remain aligned under real field constraints.
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