Distributed Sensing System Model for Future Internet Agricultural
Application
Sérgio Silva
1,3
, Salviano Soares
1,2
, António Valente
1,3
and António Moreira
3,4
1
School of Sciences and Technology, Engineering Department, UTAD, Vila Real, Portugal
2
IEETA - UA, Aveiro, Portugal
3
INESC TEC -INESC Technology and Science (formerly INESC Porto, UTAD pole), Porto, Portugal
4
DEEC- FEUP Robotics, Intelligent Systems, Porto Unviversity, Porto, Portugal
1 RESEARCH PROBLEM
To assist the irrigation process is necessary to ensure
the amount of water that we supply to the plants is
on the correct amount. To achieve this we need to
use reliable measuring systems for water amount but
also the amount of chemical agents, like fertilizers,
that contribute to the grow of the plants and also to
the pollution of rivers and water supplies.
Distributed Sensing System Model allows
continuous measurements over time and is based on
unattended wireless sensors capable of measuring
the parameters of interest, and all this information
will then be sent to and stored at a central
monitoring station.
Although there is a great number of sensors that
measure with different techniques, the amount of
water in the soils, the DSS System Model uses the
Multi-functional Heat Pulse Probe (Valente, 2006)
developed by António Valente in order to obtain not
only the soil water content, but also, the electrical
conductivity (EC - as a measure of total nutrients),
soil thermal properties (temperature, thermal
conductivity, heat capacity, and thermal diffusivity –
as a measure of how energy is partitioned in the soil
profile), water flux , and environmental temperature
at the surface.
2 OUTLINE OF OBJECTIVES
The DSS System Model needs to be cost-effective,
as less intrusive as possible and include a reliable
data communications system that allows data
collection from sensors monitoring the crops, land,
and environment. Towards this goal, a non-intrusive
approach is to use low-cost wireless sensors buried
underground, which form a so-called Wireless
Underground Sensor Network (WUSN), together
with a Wireless Aboveground Sensor Network
(WASN) capable of sensing and transporting data
towards the central monitoring station.
The development of Wireless Sensor Technology
(WST) applications in precision agriculture makes
possible to increase efficiency, productivity and
profitability while minimizing unintended impacts
on wildlife and the environment, in many
agricultural production systems.
Real time information from fields provides solid
bases for farmers to adjust strategies and take
decisions.
3 STATE OF THE ART
Agriculture is one of the most ancient activities of
man and unless real and immediate solutions are
found for specific problems or for improving
production and quality is difficult to introduce
innovation and technology. Nevertheless the use of
information from the environment, especially when
we speak about precision agriculture, where the
development of wireless sensor networks and
technology made possible some increases on
productivity and profitability while minimizing
unintended impacts on wildlife and the environment,
in many agricultural production systems.
Therefore the implementation today, of a DDS
system capable of monitoring a wide range of crops
and lands and collecting information, such as soil
water content, electrical conductivity (EC - as a
measure of total nutrients), soil thermal properties
(temperature, thermal conductivity, heat capacity,
and thermal diffusivity – as a measure of how
energy is partitioned in the soil profile), water flux,
and environmental temperature at the surface, is
accept by the framers because they understand the
benefits of this systems based on the understanding
of minimum cost versus increase of efficiency,
productivity and profitability.
10
Silva S., Soares S., Valente A. and Moreira A..
Distributed Sensing System Model for Future Internet Agricultural Application.
Copyright
c
2015 SCITEPRESS (Science and Technology Publications, Lda.)
In fact the first adopters, in 1994, found precision
agriculture to be unprofitable. Moreover they found
the instances of implementation of precision
agriculture were few and far between. Further, the
high initial investment in the form of electronic
equipment for sensing and communication meant
that only large farms could afford it. But over the
last decade the advancement in sensing and
communication technologies has significantly
brought down the cost of deployment and running of
a feasible precision agriculture framework. The
development of new electronic low cost sensing
probes (Valente,2006), and the emerging wireless
technologies with low power needs and low data rate
capabilities, which perfectly suites precision
agriculture (Wang, 2006), completely transform this
reality making today precision agriculture possible
to any pocket.
Examples like Montepaldi vineyard where since
2005 a test pilot has been deployed and a
commercial system ”VineSense” developed by
(Davide Di Palma, 2010), or the automated fertilizer
applicator for tree crops developed by (Cugati et
al., 2003) where an input module for GPS and real-
time sensor data acquisition, a decision module for
calculating the optimal quantity and spread pattern
for a fertilizer, and an output module to regulate the
fertilizer application rate. Data communications
among the modules were established using a
Bluetooth network.
USDA research group lead by Evans and
Bergman (Evans, 2007) study a precision irrigation
control of self-propelled, linear-move and center-
pivot irrigation systems. Wireless sensors were used
in the system to assist irrigation scheduling using
combined on-site weather data, remotely sensed data
and grower preferences.
A soil moisture sensor network for monitoring
soil water content changes at high spatial and
temporal scale has develop by the Institute Of
Chemistry And Dynamics Of The Geosphere
(ICDG, 2014).
A wireless infrared thermometer system for in-
field data collection develop by Mahan and Wanjura
(Mahan, 2004) with infrared sensors, programmable
logic controllers and low power radio transceivers to
collect data in the field and transmit it to a remote
receiver outside the field.
4 METHODOLOGY
This PhD work will consider the design and
implementation of a Distributed Sensing System
(DSS) capable of monitoring a wide range of crops
and lands and collecting information such as soil
water content, electrical conductivity (EC - as a
measure of total nutrients), soil thermal properties
(temperature, thermal conductivity, heat capacity,
and thermal diffusivity – as a measure of how
energy is partitioned in the soil profile), water flux,
and environmental temperature at the surface. The
DSS system will use the Multi-functional Heat Pulse
Probe (Valente, 2006), developed by António
Valente. This information will then be sent to and
stored at a central monitoring station. The DSS will
be based on unattended wireless sensors capable of
measuring the parameters of interest, including
aboveground and underground. The DSS needs to be
cost-effective, as less intrusive as possible, and
include a reliable data communications system that
allows data collection from sensors monitoring the
crops, land, and environment. Towards this goal, a
non-intrusive approach is to use low-cost wireless
sensors buried underground, which form a so-called
Wireless Underground Sensor Network (WUSN),
together with a Wireless Aboveground Sensor
Network (WASN) capable of sensing and
transporting data towards the central monitoring
station. In order to fulfill these requirements three
major design options will be considered:
1) the use of commercial off-the-shelf and low-cost
devices;
2) the use of open communications technologies
supporting adaptive modulation-coding
techniques and energy-efficiency mechanisms
and multi-hop routing;
3) a three-tier integrated and open IP-based
communications architecture.
The first-tier will be defined by the Wireless
Underground Sensor Network (WUSN) formed by a
set of nodes (sensor nodes with Multi-Functional
Heat Pulse Sensors), buried underground, which are
connected to one or more aboveground nodes.
Underground sensors may communicate using
technologies such as IEEE 802.11g/n/ah and IEEE
802.15.4/g/m. The use of the 433 MHz and 868
MHz bands will be considered to provide
underground-to-aboveground long range
communications. The underground sensors will send
data to the central monitoring station through the
second-tier.
DistributedSensingSystemModelforFutureInternetAgriculturalApplication
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The second-tier will be defined by the Wireless
Aboveground Sensor Network (WASN) supported
by standard wireless technologies, e.g., IEEE
802.11n/ac/af, together with existing mesh routing
protocols. Each WASN node will be in charge of
relaying the data generated by the WUSN nodes
connected to it, as well as the data generated by the
local sensors, towards the ground central station.
The use of the 433 MHz and 868 MHz bands will
also be considered, which together with wireless
multi-hop communications, will enable long range
communications and ensure the coverage of wide
distances. The third-tier will be defined by a reliable
sensing infrastructure deployed on top of the less
reliable node to node communication layers defined
by the first and second tiers, by taking advantage of
in-network distributed aggregation protocols. This
approach will allow operating over the less reliable
WUSN and WASN with a reduction on the amount
of data transmitted via information aggregation,
processing, and compression in each intermediate
node. Several of these protocols can also deliver
reliable communication and continuous monitoring,
by building a reliable layer and transforming the
data to make it resilient to retransmission, data loss,
and data duplication.
5 CHALENGES OF THE
IMPLEMENTATION SITE
The layout of hillside vineyards in the Douro Region
is strongly conditioned by the original slope and
relief of the parcels of vines. Also, the soil is mainly
based on complex schist which imposes some
constrains in the assessment of its hydrological
aspects. The unique characteristics of these
vineyards, as well as the topographic aspects,
erosion control, vertical planting, the intrinsic
limited water availability, and wide temperature
span across all day and year. Distributed Sensor
System monitoring and information processing can
help in understanding vineyard variability and
therefore how it might be managed, thus improving
the quantity and quality of the wines.
A feasibly ZigBee based remote sensing
network, intended for precision viticulture has
shown by Morais et al. The network nodes were
powered by batteries that are recharged with energy
harvested from the environment (Morais, 2010).
Figure 1 shows the implementation of an in-field
data acquisition network.
Figure 1: Implementation of an in-field data acquisition
network.
The implementation site is a precision viticulture
environment of “Quinta do Castro”.
To achieve maximum flexibility, the system
should recharge its batteries using energy harvested
from the surrounding environment, from up to three
sources (photonic energy, kinetic energy from
moving water in irrigation pipes and from wind),
avoiding maintenance and human interference.
The DSS platform incorporates information from
remote sensing, from in situ weather conditions,
from water source levels, from soil history, and from
farmer knowledge about the relative productivity of
selected “Management Zones” of the vineyard, can
be applied, for instance, to predict yield and
diseases, and to disseminate advice throughout the
growing season about the optimum usage of water
and the chemical treatments needed.
6 SENSORS HARDWARE
The sensor nodes hardware is based on the multi-
functional probe (MFP) schematically represented in
Figure 2.
Figure 2: Multi-functional probe (Valente, 2006).
The MFP consists of one central heater needle
and four surrounding thermistors, as reported by
Mori et al., (2003). The needles are made from
stainless steel tubing, 0.912m min diameter,
protruding 40mm beyond the edge of the PVC
PECCS2015-DoctoralConsortium
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mounting. Spacing between the heater and
temperature sensors is about 8.5 mm. The heater was
made from enameled Stablohm 800A wire
(0.062mm in diameter and 440.8 m1 of
resistivity), which was inserted in the heater needle.
The heater resistance was 100 (heater resistivity
of 2010 m1). The needle is then filled with
high thermal-conductivity epoxy glue to obtain
water resistant and electrically insulated heater.
The Wenner array is formed by four aluminium
ring electrodes equally spaced with 3mm separation.
The outer electrodes (denoted as A and B in Figure
2) provide for an alternated current source (1mA
peak-to-peak and 100 Hz frequency), whereas the
potential difference is measured across the two inner
electrodes (M and N).
The overall system, including battery, fits in a
cylinder with 21.4mm in diameter and
approximately 50mm long.
Figure 3 shows the MFP probe before
installation.
Figure 3: Multi-functional probe (Valente, 2006).
For temperature measurements, four thermistors
are used where an excitation current of 200 µA is
used. This excitation current flows directly through
the thermistor generating a voltage across the
thermistor proportional to its resistance.
For the heat pulse, a voltage (VHP = 24 V) is
applied to the heater (RHEATER = 100) 3. The
control is made by turning on the transistor Q1
switch for 8 s and then off for 900 s. The accuracy of
q’ in Eq. (1) is very important for the T
determination. The power dissipated per unit length
of heater needle, q’ is then calculated as,
′
R
(1)
where Ih (A) is the current through the heater and
Rm (m1) is the resistance per unit length of the
heater wire. If the values of Ih and Rm are accurate,
this calculation gives an accurate value for q’. This
requires a voltage measurement of the voltage drop
across a current-sensing resistor, VRSENS.
Electrical conductivity measurements are
performed using a Wenner array where a alternated
current (1mA peak-to-peak and 100 Hz frequency) is
applied to the outer electrodes, whereas the voltage
across the inner electrodes is measured. To
efficiently measure the electrical conductivity, an
integrated sinusoidal current source is needed due to
interactions between the capacitive (dielectric) and
conductive behaviors of soils (Zhang, 2004). Most
sine current generators are based on a direct digital
synthesizer (DDS), which requires a read-only
memory (ROM) sine look-up table and a current
mode digital-to-analog converter (DAC). This
solution requires a large integration area since
waveform generation is closely related to the ROM
size and the DAC resolution. Instead of using such
approach, a set of precisely scaled current mirrors
can be used to produce sine steps (Donfack, 2000).
Sizes of individual current mirror transistors have
been calculated according to sine wave values. The
current increments, sin(αi), after sin(αi1) are
given by:
(
2)
The voltage drop at the inner electrodes of the
Wenner array is measured using two peak detectors
for amplitude measurement. These are used to detect
and hold the minimum and the maximum values of
the signal. Due to the switching action of the
excitation circuit, a first-order gm-C filter is used
before the peak detectors.
7 EXPECTED OUTCOME
The use of the proposed DDS System Model is
expected to improve productivity and profitability of
precision agriculture; with the present work we
expect in the near future show that this model can
provide the technology means to farms in order to
achieve the minimum costs versus increases in
efficiency.
The system must provide, with minimum
intrusion and assistance, reliable communications
and data collection from sensors monitoring the
crops, land, and environment.
Provide real time information, from fields, for
farmers to adjust strategies and take decisions.
8 STAGE OF THE RESEARCH
The research is on the initial stage with the
implementation of the wireless sensors and testing of
the communications.
DistributedSensingSystemModelforFutureInternetAgriculturalApplication
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ACKNOWLEDGEMENTS
This work is financed by the ERDF European
Regional Development Fund through the
COMPETE Programme (operational programme for
competitiveness) and by National Funds through the
FCT Fundação para a Ciência e a Tecnologia
(Portuguese Foundation for Science and
Technology) within project ref. FCOMP 01 0124
FEDER 022701.
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